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ϴѧĶ漰߿еˮƽĺҫ

ߣſ

1ǰ

116գյSpringerĵʼƼĶCircuits, Systems, 
and Signal ProcessingڿƪĸġԴ2009
һֱǸڿıί/༭(Associate Editor)оһƪġ

ƪǣ

1. Ling Xu, Feng Ding. Iterative Parameter Estimation for Signal 
Models Based on Measured Data. Circuits, Systems, and Signal 
Processing, July 2018, Volume 37, Issue 7, pp 3046C3069
 	
2. Jiling Ding, Recursive and Iterative Least Squares Parameter 
Estimation Algorithms for Multiple-InputCOutput-Error Systems with 
Autoregressive Noise. Circuits, Systems, and Signal Processing, May 2018,
 Volume 37, Issue 5, pp 1884C1906. 
 	
3. Junhong Li, Wei Xing Zheng, Juping Gu, Liang Hua. A Recursive 
Identification Algorithm for Wiener Nonlinear Systems with Linear 
State-Space Subsystem. Circuits, Systems, and Signal Processing, June 
2018, Volume 37, Issue 6, pp 2374C2393. 

ȣƪĵĿǷǳƵģǹڲƺͱʶġ
ЩĴӱͿóǴͳĿ⣬ƽʲô⣬ֺʲôҲû
źŴоȵǳ࣬ΪʲôƪĳΪģ
ҾһڡҽѵCircuits, Systems, and Signal Processing
ıί㱨

2һƪĵúͱ÷

һƪLing Xu, Feng DingڽϴѧѧԺLing Xu
ҵְҵѧԺѧԺ

First Online: 11 November 2017
348 Downloads, 52 Citations
58 References

һ οףReferences

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 ãCitations

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1. Jing Yan, Xuyang Tian, Xiaoyuan Luo and Xinping Guan. Design of 
an Embedded Communication System for Underwater Asynchronous 
Localization. IEEE Embedded Systems Letters, 2019, Volume 11, Number 
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2. Xiao Zhang, Feng Ding, Ling Xu, Ahmed Alsaedi and Tasawar 
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Output-Error-Like ARMA Systems, Mathematics, 2019, Volume 7, 
Number 6, Page 558. [5 CITATIONS]

16. Ling Xu, Feng Ding and Quanmin Zhu, Hierarchical Newton and 
least squares iterative estimation algorithm for dynamic systems by 
transfer functions based on the impulse responses. International Journal 
of Systems Science, 2019, Volume 50, Number 1, Page 141. [22 
CITATIONS]

17. Lijuan Liu, Feng Ding and Quanmin Zhu. Recursive identification 
for multivariate autoregressive equation-error systems with 
autoregressive noise. International Journal of Systems Science, 2018, 
Volume 49, Number 13, Page 2763. [2 CITATIONS]

18. Bingbing Shen, Feng Ding, Ling Xu and Tasawar Hayat. Data 
Filtering Based Multi-innovation Gradient Identification Methods for 
Feedback Nonlinear Systems, International Journal of Control, 
Automation and Systems, 2018, Volume 16, Number 5, Page 2225. [1 
CITATIONS]

19. Shoupeng Song and Jingjing Shen. Exponential-Reproducing-
Kernel-Based Sparse Sampling Method for Finite Rate of Innovation 
Signal with Arbitrary Pulse Echo Position, Circuits, Systems, and Signal 
Processing, 2019, Volume 38, Number 3, Page 1179. [0 CITATIONS]

20. Yuanbiao Hu, Qin Zhou, Hao Yu, Zheng Zhou and Feng Ding. 
Two-Stage Generalized Projection Identification Algorithms for 
Stochastic Systems, Circuits, Systems, and Signal Processing, 2019, 
Volume 38, Number 6, Page 2846. [2 CITATIONS]

21. Lijuan Wan, Ximei Liu, Feng Ding and Chunping Chen. 
Decomposition Least-Squares-Based Iterative Identification Algorithms 
for Multivariable Equation-Error Autoregressive Moving Average Systems,
 Mathematics, 2019, Volume 7, Number 7, Page 609. [2 CITATIONS]

22. Junxia Ma, Qiulin Fei and Weili Xiong. Sliding Window Iterative
 Identification of Systems With Asymmetric Preload Nonlinearity Based 
on the Key Term Separation, IEEE Access, 2019, Volume 7, Page 36633. [0
 CITATIONS]

23. Huafeng Xia, Yongqing Yang, Feng Ding, Ahmed Alsaedi and 
Tasawar Hayat. Maximum likelihood-based recursive least-squares 
estimation for multivariable systems using the data filtering technique, 
International Journal of Systems Science, 2019, Volume 50, Number 6, 
Page 1121. [0 CITATIONS]

24. Mengting Chen, Feng Ding, Ahmed Alsaedi and Tasawar Hayat. 
Iterative Identification Algorithms for Bilinear-in-parameter Systems by 
Using the Over-parameterization Model and the Decomposition, 
International Journal of Control, Automation and Systems, 2018, Volume
 16, Number 6, Page 2634. [2 CITATIONS]

25. Jian Pan, Wei Li and Haipeng Zhang. Control Algorithms of 
Magnetic Suspension Systems Based on the Improved Double 
Exponential Reaching Law of Sliding Mode Control, International Journal
 of Control, Automation and Systems, 2018, Volume 16, Number 6, Page 
2878. [38 CITATIONS]

26. Guang-Yong Chen, Min Gan, C. L. Philip Chen and Long Chen. A 
Two-Stage Estimation Algorithm Based on Variable Projection Method 
for GPS Positioning, IEEE Transactions on Instrumentation and 
Measurement, 2018, Volume 67, Number 11, Page 2518. [3 CITATIONS]

27. Ling Xu, Feng Ding and Feng Ding. Algebraic parameter 
estimation approaches for process control systems from sine responses, 
 2019 Chinese Control And Decision Conference (CCDC), Year: 2019, 
Page 1720. [0 CITATIONS]

28. Huan Xu, Feng Ding and Jie Sheng. On some parameter 
estimation algorithms for the nonlinear exponential autoregressive 
model, International Journal of Adaptive Control and Signal Processing, 
2019, Volume 33, Number 6, Page 999. [1 CITATIONS]

29. Xiao Zhang, Feng Ding and Erfu Yang, State estimation for 
bilinear systems through minimizing the covariance matrix of the state 
estimation errors. International Journal of Adaptive Control and Signal 
Processing, 2019, Volume 33, Number 7, Page 1157. [7 CITATIONS]

30. Yasser Shekofteh, Sajad Jafari, Karthikeyan Rajagopal and Viet-
Thanh Pham. Parameter Identification of Chaotic Systems Using a 
Modified Cost Function Including Static and Dynamic Information of 
Attractors in the State Space, Circuits, Systems, and Signal Processing, 
2019, Volume 38, Number 5, Page 2039. [1 CITATIONS]

31. Cheng Wang and Kaicheng Li, Aitken-Based Stochastic Gradient 
Algorithm for ARX Models with Time Delay. Circuits, Systems, and Signal
 Processing, 2019, Volume 38, Number 6, Page 2863.. [0 CITATIONS]

32. Ling Xu, Weili Xiong, Ahmed Alsaedi and Tasawar Hayat. 
Hierarchical Parameter Estimation for the Frequency Response Based on
 the Dynamical Window Data, International Journal of Control, 
Automation and Systems, 2018, Volume 16, Number 4, Page 1756. [46 
CITATIONS]

33. Qinyao Liu, Feng Ding and Erfu Yang. Parameter estimation 
algorithm for multivariable controlled autoregressive autoregressive 
moving average systems, Digital Signal Processing, 2018, Volume 83, 
Page 323. [4 CITATIONS]

34. Qinyao Liu, Feng Ding, Ling Xu and Erfu Yang. Partially coupled 
gradient estimation algorithm for multivariable equation-error 
autoregressive moving average systems using the data filtering 
technique, IET Control Theory & Applications, 2019, Volume 13, Number 
5, Page 642. [11 CITATIONS]

35. Huafeng Xia, Yongqing Yang, Feng Ding, Ling Xu and Tasawar 
Hayat. Maximum likelihood gradient-based iterative estimation for 
multivariable systems, IET Control Theory & Applications, 2019, Volume 
13, Number 11, Page 1683. [0 CITATIONS]

36. Ya Gu, Jicheng Liu, Xiangli Li, Yongxin Chou and Yan Ji, State 
space model identification of multirate processes with time-delay using
 the expectation maximization. Journal of the Franklin Institute, 2019, 
Volume 356, Number 3, Page 1623. [14 CITATIONS]

37. Zhengwei Ge, Feng Ding, Ling Xu, Ahmed Alsaedi and Tasawar 
Hayat. Gradient-based iterative identification method for multivariate 
equation-error autoregressive moving average systems using the 
decomposition technique, Journal of the Franklin Institute, 2019, Volume 
356, Number 3, Page 1658. [17 CITATIONS]

38. Ya Gu, Yongxin Chou, Jicheng Liu and Yan Ji. Moving horizon 
estimation for multirate systems with time-varying time-delays, Journal 
of the Franklin Institute, 2019, Volume 356, Number 4, Page 2325. [15 
CITATIONS]

39. Ting Cui, Feng Ding, Xiangli Li and Tasawar Hayat. Kalman 
filtering based gradient estimation algorithms for observer canonical 
state-space systems with moving average noises, Journal of the Franklin 
Institute, 2019, Volume 356, Number 10, Page 5485. [0 CITATIONS]

40. Jian Pan, Hao Ma, Xiao Jiang, Wenfang Ding and Feng Ding. 
Adaptive Gradient-Based Iterative Algorithm for Multivariable Controlled 
Autoregressive Moving Average Systems Using the Data Filtering 
Technique, Complexity, 2018, Volume 2018, Page 1. [30 CITATIONS]

41. Lijuan Liu, Feng Ding, Cheng Wang, Ahmed Alsaedi and Tasawar 
Hayat. Maximum Likelihood Multi-innovation Stochastic Gradient 
Estimation for Multivariate Equation-error Systems, International Journal
 of Control, Automation and Systems, 2018, Volume 16, Number 5, Page 
2528. [0 CITATIONS]

42. Yunze Guo, Lijuan Wan, Ling Xu, Feng Ding, Ahmed Alsaedi and 
Tasawar Hayat. Two-stage Recursive Least Squares Parameter Estimation
 Algorithm for Multivariate Output-error Autoregressive Moving Average 
Systems, International Journal of Control, Automation and Systems, 2019,
 Volume 17, Number 6, Page 1547. [0 CITATIONS]

43. Siyu Liu, Feng Ding, Ling Xu and Tasawar Hayat. Hierarchical 
Principle-Based Iterative Parameter Estimation Algorithm for Dual-
Frequency Signals, Circuits, Systems, and Signal Processing, 2019, Volume 
38, Number 7, Page 3251. [11 CITATIONS]

44. Jie Ding, Jiazhong Chen, Jinxing Lin and Lijuan Wan. Particle 
filtering based parameter estimation for systems with output-error type 
model structures, Journal of the Franklin Institute, 2019, Volume 356, 
Number 10, Page 5521. [11 CITATIONS]

45. Mengting Chen and Feng Ding. Iterative Identification of 
Discrete-Time Systems With Bilinear Forms in the Presence of Colored 
Noises Based on the Hierarchical Principle, Journal of Computational and 
Nonlinear Dynamics, 2019, Volume 14, Number 9. [0 CITATIONS]

46. Mengting Chen, Feng Ding, Rongming Lin, Ahmed Alsaedi and 
Tasawar Hayat. Parameter estimation for a special class of nonlinear 
systems by using the over-parameterisation method and the linear filter,
 International Journal of Systems Science, 2019, Volume 50, Number 9, 
Page 1689. [0 CITATIONS]

47. Longjin Wang, Yan Ji, Lijuan Wan and Ni Bu. Hierarchical 
recursive generalized extended least squares estimation algorithms for a 
class of nonlinear stochastic systems with colored noise, Journal of the 
Franklin Institute, 2019, Volume 356, Number 16, Page 10102. [0 
CITATIONS]

48. Mengting Chen, Feng Ding and Erfu Yang. Gradient-based 
iterative parameter estimation for bilinear-in-parameter systems using 
the model decomposition technique, IET Control Theory & Applications, 
2018, Volume 12, Number 17, Page 2380. [2 CITATIONS]


49. Ling Xu, Feng Ding and Feng Ding. Proceedings of 2019 Chinese 
Intelligent Systems Conference. Series: Lecture Notes in Electrical 
Engineering, Year: 2020, Volume 594, Page 620. [0 CITATIONS]

50. Huan Xu, Feng Ding and Erfu Yang. Modeling a nonlinear 
process using the exponential autoregressive time series model, 
Nonlinear Dynamics, 2019, Volume 95, Number 3, Page 2079. [16 
CITATIONS]

51. Xian Lu, Feng Ding, Ahmed Alsaedi and Tasawar Hayat. 
Decomposition-based Gradient Estimation Algorithms for Multivariable 
Equation-error Systems, International Journal of Control, Automation 
and Systems, 2019, Volume 17, Number 8, Page 2037. [0 CITATIONS]

52. Huafeng Xia, Yan Ji, Ling Xu and Tasawar Hayat. Maximum 
Likelihood-Based Recursive Least-Squares Algorithm for Multivariable 
Systems with Colored Noises Using the Decomposition Technique, 
Circuits, Systems, and Signal Processing, 2019, Volume 38, Number 3, 
Page 986. [2 CITATIONS]

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First Online: 31 August 2017
345 Downloads, 42 Citations
48 References

һ οףReferences

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 ãCitations

øĵ£

1. Jie Ding, Jiazhong Chen, Jinxing Lin and Lijuan Wan. Particle 
filtering based parameter estimation for systems with output-error type 
model structures, Journal of the Franklin Institute, 2019, Volume 356, 
Number 10, Page 5521. [11 CITATIONS]

2. Mengting Chen, Feng Ding, Ahmed Alsaedi and Tasawar Hayat. 
Iterative Identification Algorithms for Bilinear-in-parameter Systems by 
Using the Over-parameterization Model and the Decomposition, 
International Journal of Control, Automation and Systems, 2018, Volume 
16, Number 6, Page 2634. [2 CITATIONS]

3. Jiling Ding and Weihai Zhang. Recursive least squares based 
hierarchical estimation for multi-input nonlinear systems, Conference: 
2019 Chinese Control And Decision Conference (CCDC), Year: 2019, Page
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4. Huan Xu, Feng Ding and Jie Sheng. On some parameter 
estimation algorithms for the nonlinear exponential autoregressive 
model, International Journal of Adaptive Control and Signal Processing, 
2019, Volume 33, Number 6, Page 999. [1 CITATIONS]

5. Meihang Li, Ximei Liu and Feng Ding. The filtering\based 
maximum likelihood iterative estimation algorithms for a special class of 
nonlinear systems with autoregressive moving average noise using the 
hierarchical identification principle, International Journal of Adaptive 
Control and Signal Processing, 2019, Volume 33, Number 7, Page 1189. 
[5 CITATIONS]

6. Feng Ding, Xiao Zhang and Ling Xu. The innovation algorithms for
 multivariable state\space models, International Journal of Adaptive 
Control and Signal Processing, 2019, Volume 33, Number 11, Page 1601. 
[0 CITATIONS]

7. Feng Ding, Dandan Meng, Jiyang Dai, Qishen Li, Ahmed Alsaedi 
and Tasawar Hayat. Least Squares based Iterative Parameter Estimation 
Algorithm for Stochastic Dynamical Systems with ARMA Noise Using the
 Model Equivalence, International Journal of Control, Automation and 
Systems, 2018, Volume 16, Number 2, Page 630. [28 CITATIONS]]

8. Cheng Wang and Kaicheng Li. Aitken-Based Stochastic Gradient 
Algorithm for ARX Models with Time Delay, Circuits, Systems, and Signal
 Processing, 2019, Volume 38, Number 6, Page 2863. [0 CITATIONS]

9. Feng Ding, Huibo Chen, Ling Xu, Jiyang Dai, Qishen Li and 
Tasawar Hayat. A hierarchical least squares identification algorithm for 
Hammerstein nonlinear systems using the key term separation, Journal 
of the Franklin Institute, 2018, Volume 355, Number 8, Page 3737. [50 
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10. Ling Xu, Weili Xiong, Ahmed Alsaedi and Tasawar Hayat. 
Hierarchical Parameter Estimation for the Frequency Response Based on 
the Dynamical Window Data, International Journal of Control, 
Automation and Systems, 2018, Volume 16, Number 4, Page 1756. [46 
CITATIONS] 

11. Qinyao Liu, Feng Ding and Erfu Yang. Parameter estimation 
algorithm for multivariable controlled autoregressive autoregressive 
moving average systems, Digital Signal Processing, 2018, Volume 83, 
Page 323. [4 CITATIONS]

12. Qinyao Liu, Feng Ding, Ling Xu and Erfu Yang. Partially coupled 
gradient estimation algorithm for multivariable equation-error 
autoregressive moving average systems using the data filtering 
technique, IET Control Theory & Applications, 2019, Volume 13, Number 
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13. ShuMing He and Yun Lin. Cauchy Distribution Function-
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14. Jian Pan, Hao Ma, Xiao Jiang, Wenfang Ding and Feng Ding, 
Adaptive Gradient-Based Iterative Algorithm for Multivariable Controlled 
Autoregressive Moving Average Systems Using the Data Filtering 
Technique, Complexity, 2018, Volume 2018, Page 1. [30 CITATIONS]

15. Mengting Chen, Feng Ding, Rongming Lin, Ahmed Alsaedi and 
Tasawar Hayat. Parameter estimation for a special class of nonlinear 
systems by using the over-parameterisation method and the linear filter, 
Journal: International Journal of Systems Science, 2019, Volume 50, 
Number 9, Page 1689. [0 CITATIONS]

16. Lijuan Liu, Feng Ding, Cheng Wang, Ahmed Alsaedi and Tasawar 
Hayat. Maximum Likelihood Multi-innovation Stochastic Gradient 
Estimation for Multivariate Equation-error Systems, Journal: International 
Journal of Control, Automation and Systems, 2018, Volume 16, Number 
5, Page 2528. [0 CITATIONS]

17. Lijuan Liu, Yan Wang, Cheng Wang, Feng Ding and Tasawar 
Hayat. Maximum likelihood recursive least squares estimation for 
multivariate equation-error ARMA systems, Journal of the Franklin 
Institute, 2018, Volume 355, Number 15, Page 7609. [2 CITATIONS]

18. Qinyao Liu, Feng Ding, Yan Wang, Cheng Wang and Tasawar 
Hayat. Auxiliary model based recursive generalized least squares 
identification algorithm for multivariate output-error autoregressive 
systems using the decomposition technique, Journal of the Franklin 
Institute, 2018, Volume 355, Number 15, Page 7643. [1 CITATIONS]

19. Yunze Guo, Lijuan Wan, Ling Xu, Feng Ding, Ahmed Alsaedi and 
Tasawar Hayat. Two-stage Recursive Least Squares Parameter Estimation 
Algorithm for Multivariate Output-error Autoregressive Moving Average 
Systems, International Journal of Control, Automation and Systems, 2019, 
Volume 17, Number 6, Page 1547. [0 CITATIONS]

20. Siyu Liu, Feng Ding, Ling Xu and Tasawar Hayat. Hierarchical 
Principle-Based Iterative Parameter Estimation Algorithm for Dual-
Frequency Signals, Circuits, Systems, and Signal Processing, 2019, Volume
 38, Number 7, Page 3251. [11 CITATIONS]

21. Mengting Chen, Feng Ding and Erfu Yang. Gradient-based 
iterative parameter estimation for bilinear-in-parameter systems using 
the model decomposition technique, IET Control Theory & Applications, 
2018, Volume 12, Number 17, Page 2380. [2 CITATIONS]

22. Lijuan Wan, Ximei Liu, Feng Ding and Chunping Chen. 
Decomposition Least-Squares-Based Iterative Identification Algorithms 
for Multivariable Equation-Error Autoregressive Moving Average Systems,
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23. Peiman Davari Dolatabadi, Karen Khanlari, Mohsen Ghafory 
Ashtiany and Mahmood Hosseini. System identification method by using
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24. Xian Lu, Feng Ding, Ahmed Alsaedi and Tasawar Hayat, 
Decomposition-based Gradient Estimation Algorithms for Multivariable 
Equation-error Systems. International Journal of Control, Automation 
and Systems, 2019, Volume 17, Number 8, Page 2037. [0 CITATIONS]

25. Huafeng Xia, Yan Ji, Ling Xu and Tasawar Hayat. Maximum 
Likelihood-Based Recursive Least-Squares Algorithm for Multivariable 
Systems with Colored Noises Using the Decomposition Technique, 
Circuits, Systems, and Signal Processing, 2019, Volume 38, Number 3, 
Page 986. [2 CITATIONS]

26. Cheng Wang, Kaicheng Li and Shuai Su. Hierarchical Newton 
Iterative Parameter Estimation of a Class of Input Nonlinear Systems 
Based on the Key Term Separation Principle,  Complexity, 2018, Volume 
2018, Page 1. [1 CITATIONS]

27. Meihang Li, Ximei Liu and Feng Ding. Filtering-Based Maximum 
Likelihood Gradient Iterative Estimation Algorithm for Bilinear Systems 
with Autoregressive Moving Average Noise, Journal: Circuits, Systems, 
and Signal Processing, 2018, Volume 37, Number 11, Page 5023. [9 
CITATIONS]. 

28. Huafeng Xia, Yan Ji, Yanjun Liu and Ling Xu. Maximum 
Likelihood-based Multi-innovation Stochastic Gradient Method for 
Multivariable Systems, International Journal of Control, Automation and 
Systems, 2019, Volume 17, Number 3, Page 565. [1 CITATIONS] 

29. Feiyan Chen, Feng Ding, Ling Xu and Tasawar Hayat. Data 
filtering based maximum likelihood extended gradient method for 
multivariable systems with autoregressive moving average noise, Journal 
of the Franklin Institute, 2018, Volume 355, Number 7, Page 3381. [2 
CITATIONS] 

30. Ling Xu, Feng Ding and Quanmin Zhu. Hierarchical Newton and 
least squares iterative estimation algorithm for dynamic systems by 
transfer functions based on the impulse responses, International Journal
 of Systems Science, 2019, Volume 50, Number 1, Page 141. [22 
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31. Rajalakshmi Murugesan, Jeyadevi Solaimalai and Karthik 
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32. Qinyao Liu and Feng Ding. Auxiliary Model-Based Recursive 
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Autoregressive Systems Using the Data Filtering, Circuits, Systems, and 
Signal Processing, 2019, Volume 38, Number 2, Page 590. [22 CITATIONS] 

33. Xiao Zhang, Feng Ding, Ling Xu and Erfu Yang. State filtering-
based least squares parameter estimation for bilinear systems using the 
hierarchical identification principle, IET Control Theory & Applications, 
2018, Volume 12, Number 12, Page 1704. [53 CITATIONS] 

34. Ting Cui, Feng Ding, Ahmed Alsaedi and Tasawar Hayat. 
Recursive parameter and state estimation methods for observability 
canonical state-space models exploiting the hierarchical identification 
principle, IET Control Theory & Applications, 2019, Volume 13, Number 
16, Page 2538. [0 CITATIONS]

35. Lijuan Liu, Feng Ding and Quanmin Zhu. Recursive identification 
for multivariate autoregressive equation-error systems with 
autoregressive noise, International Journal of Systems Science, 2018, 
Volume 49, Number 13, Page 2763. [2 CITATIONS] 

36. Ya Gu, Jicheng Liu, Xiangli Li, Yongxin Chou and Yan Ji. State 
space model identification of multirate processes with time-delay using 
the expectation maximization, Journal of the Franklin Institute, 2019, 
Volume 356, Number 3, Page 1623. [14 CITATIONS] 

37. Zhengwei Ge, Feng Ding, Ling Xu, Ahmed Alsaedi and Tasawar 
Hayat. Gradient-based iterative identification method for multivariate 
equation-error autoregressive moving average systems using the 
decomposition technique, Journal of the Franklin Institute, 2019, Volume 
356, Number 3, Page 1658. [17 CITATIONS]

38. Ting Cui, Feng Ding, Xiangli Li and Tasawar Hayat. Kalman 
filtering based gradient estimation algorithms for observer canonical 
state-space systems with moving average noises. Journal of the Franklin 
Institute, 2019, Volume 356, Number 10, Page 5485. [0 CITATIONS]

39. Bingbing Shen, Feng Ding, Ling Xu and Tasawar Hayat. Data 
Filtering Based Multi-innovation Gradient Identification Methods for 
Feedback Nonlinear Systems, International Journal of Control, 
Automation and Systems, 2018, Volume 16, Number 5, Page 2225. [1 
CITATIONS]

40. Yuanbiao Hu, Qin Zhou, Hao Yu, Zheng Zhou and Feng Ding. 
Two-Stage Generalized Projection Identification Algorithms for 
Stochastic Systems, Circuits, Systems, and Signal Processing, 2019, 
Volume 38, Number 6, Page 2846. [2 CITATIONS]

41. Junhong Li and Xiao Li, Particle Swarm Optimization Iterative 
Identification Algorithm and Gradient Iterative Identification Algorithm 
for Wiener Systems with Colored Noise.  Complexity, 2018, Volume 2018, 
Page 1. [1 CITATIONS]

42. Huafeng Xia, Yongqing Yang, Feng Ding, Ahmed Alsaedi and 
Tasawar Hayat. Maximum likelihood-based recursive least-squares 
estimation for multivariable systems using the data filtering technique, 
International Journal of Systems Science, 2019, Volume 50, Number 6, 
Page 1121. [0 CITATIONS]


ܹ42У35ã[2], [3]-[7], [9]-[12], [14]-[22], 
[24]-[25], [27]-[30], [32]-[35], [37]-[42]Feng Ding,Jiling Ding, 
Ling Xu, Junhong LiȺõġ1Էǻᣬ
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4ƪĵúͱ÷

 Junhong Li, Wei Xing Zheng,Juping Gu, Liang Hua 
ͨѧѧԺWei Xing Zhengĵλ School of Computing, 
Engineering and Mathematics, Western Sydney University, Sydney, 
Australia

First Online: 20 October  2017
369 Downloads, 21 Citations
38 References

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38ƪοУ18ƪ2-6, 12-15, 22,29-3235-38 
Feng Ding, Ling Xu, Junlong Li, Wei Xing Zheng, Liang Hua, Wenfang 
Ding, D.Q. Wang Щ˶ڲͬǹͬߣ໥
йߵĹϵδһھ

 ãCitations

øĵ£

1. Bingbing Shen, Feng Ding, Ling Xu and Tasawar Hayat. Data 
Filtering Based Multi-innovation Gradient Identification Methods for 
Feedback Nonlinear Systems, International Journal of Control, 
Automation and Systems, 2018, Volume 16, Number 5, Page 2225. [1 
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3. Qinyao Liu, Feng Ding, Ling Xu and Erfu Yang. Partially coupled 
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5, Page 642. [11 CITATIONS]

4. Huafeng Xia, Yongqing Yang, Feng Ding, Ling Xu and Tasawar 
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multivariable systems, IET Control Theory & Applications, 2019, Volume 
13, Number 11, Page 1683. [0 CITATIONS]

5. Ting Cui, Feng Ding, Xiangli Li and Tasawar Hayat. Kalman filtering
 based gradient estimation algorithms for observer canonical state-space
 systems with moving average noises, Journal of the Franklin Institute, 
2019, Volume 356, Number 10, Page 5485. [0 CITATIONS]

6. Siyu Liu, Feng Ding, Ling Xu and Tasawar Hayat. Hierarchical 
Principle-Based Iterative Parameter Estimation Algorithm for Dual-
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7. Rajalakshmi Murugesan, Jeyadevi Solaimalai and Karthik 
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Weighted Parameter Estimation for Hammerstein Nonlinear ARX 
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estimation for multivariable systems using the data filtering technique,
 International Journal of Systems Science, 2019, Volume 50, Number 6, 
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17. Meihang Li, Ximei Liu and Feng Ding. The filtering\based 
maximum likelihood iterative estimation algorithms for a special class of 
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hierarchical identification principle, International Journal of Adaptive 
Control and Signal Processing, 2019, Volume 33, Number 7, Page 1189. 
[5 CITATIONS]

18. Feng Ding, Xiao Zhang and Ling Xu.  The innovation algorithms 
for multivariable state\space models, Journal: International Journal of 
Adaptive Control and Signal Processing, 2019, Volume 33, Number 11, 
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19. Jian Pan, Hao Ma, Xiao Jiang, Wenfang Ding and Feng Ding.  
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Autoregressive Moving Average Systems Using the Data Filtering 
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20. Qinyao Liu and Feng Ding. Auxiliary Model-Based Recursive 
Generalized Least Squares Algorithm for Multivariate Output-Error 
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Signal Processing, 2019, Volume 38, Number 2, Page 590. [22 CITATIONS]

21. Lijuan Liu, Yan Wang, Cheng Wang, Feng Ding and Tasawar 
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21У16Σ[1, 3-6, 9-11, 13-21]Feng Ding, Ling Xu, 
Junhong Liõġǻߵù2ΣΪй½á

5

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պ(Javier C. Hernndez)ǡŦԼʱפߡ

(XYS20191113)

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غϼ3052019.10.21-25


@fangshimin
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California, USAxysblogs.org/fangzhouziBorn September 28, 1967Joined 
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@fangshimin

Oct 21
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ЩǶɱˣʵܶҲŮԻڻпԱԺ
֤һʲôֵı
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@fangshimin

Oct 21
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Siyuefeixu
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Oct 21
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Fixth
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Oct 21
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@fangshimin

Oct 21
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ù˾ĿռѧоҪǺųÿռձּƳƷǰ
˵ֿռձּһձּƣѧ
ԭҪƷԵúüŵʩһţˡ
https://pbs.twimg.com/media/EHcAyK6U8AUgAxa?format=jpg&name=900x900


@fangshimin

Oct 20
Ů֪˵˰οЧӦô֪ҩܲβҾ͸
ա˫ä飬һ˵ˡԼǵ˶ʿʱŽӴЩ
˵һһǿҪƲЩΪ⿹ѧ
˵ѧٱЩ͵ԱЩԱǱȾ׳


@fangshimin
Replying to 
@FallIntoTheSeaK
ա˫ä鵱ɡö飬Ʊʵ飬˵Ҳ
ûʲô˼Ϊǵ̬ȣԶ㲻ˡ

ü
@Despairwrath

Oct 20
ʸ˽⣬ŮݣӢｲú


@fangshimin
Replying to 
@Despairwrath
ۿѧࡰӢ


@fangshimin

Oct 21
ķ羰ߣ150ʾܡ
https://pbs.twimg.com/media/EHcXkLpU8AAzEuq?format=jpg&name=900x900



@fangshimin

Oct 21
ʩһʱʿǿ˾ԽĹȻع
Ϊйѧ󸻺
https://pbs.twimg.com/media/EHco1_UUUAAQzAK?format=jpg&name=900x900


@fangshimin

Oct 21
ʮ꣬ͽ77%½65%Ẕ̌17%ӵ26%
󲿷֣54%˲ȥȥãǧһ1981-1996
̱40%֮һŽ̡׷ϱŷŷָտɴ
https://pbs.twimg.com/media/EHcv-6OUwAASOQD?format=jpg
https://pbs.twimg.com/media/EHcv-6HUEAA1jrM?format=jpg
https://pbs.twimg.com/media/EHcv-6jUYAAvmVi?format=jpg
https://pbs.twimg.com/media/EHcv-6kU8AAFvi5?format=jpg


Winnie Mo
@XueFeiYun

Oct 21
δΣӦ˹ֻ޼ɵӣ
ѵԨ


@fangshimin
Replying to 
@XueFeiYun
ɹһᴫͳʲô̶ûȴҪǰ;ͨ


@fangshimin

Oct 21
ҼǵйǲйģԺܶ
йǿյġ֪ЩйڶԱƶȺͷչ·
һġ
https://pbs.twimg.com/media/EHc3whzVAAIT36q?format=jpg&name=medium


@fangshimin

Oct 21
Ƿᡣ
https://pbs.twimg.com/media/EHdKjrpU4AEXqki?format=jpg&name=medium



@fangshimin

Oct 21
ӳǱȥҪֹ˹𡣴
˵ĿҪǻؼǵļң
https://pbs.twimg.com/media/EHdc9G3U8AAmIBw?format=jpg&name=medium


@fangshimin

Oct 21
ī߾ѵĴС߶񣬸ĸھģС
ĸȥͥеͥʽĸǲ
عСȴ˵ŮûɹСҲ
ˡ
https://pbs.twimg.com/media/EHdkgeVVAAEVVxQ?format=jpg&name=small
https://pbs.twimg.com/media/EHdkgeSU0AA83qM?format=jpg&name=small


@fangshimin

Oct 21
2016һˣһһʶء
https://pbs.twimg.com/media/EHdsmAKVAAc_2z6?format=jpg
https://pbs.twimg.com/media/EHdsmKVU0AA3hTQ?format=jpg


@fangshimin

Oct 22
ҽľ̸֮ԾԲС
https://twitter.com/i/status/1186545090501599233


Eddie Cheng
@realEddieCheng
ҸݵĴѧУ԰Ѿɡ
https://pbs.twimg.com/media/EHgxRpGU4AE2ozW?format=png&name=900x900


@fangshimin

Oct 22
Replying to 
@realEddieCheng
ڲģݵǿ100ǰһɣƽÿһ˱
Υɡ߷ԺоƵķΥܡûΪߣ
ΪԴﻻȡ췽ҲһֱûΥܡȥ
Reasonһƪ·Υhttps://t.co/ZjzB1D5Gtn?amp=1


@fangshimin

Oct 22
ʥǸȵӲ죬ɣȷɳĮʱм
»ߡɣȷϮ¾Ȼﵽ32϶ȣȫȣ
ӦǴ¼¡¶ֻ25ȣʪֻ20%ȥɹ̫
ͺˡ
https://pbs.twimg.com/media/EHhG5-rVUAAkgDM?format=jpg&name=small
https://pbs.twimg.com/media/EHhG5-qUEAArI-m?format=jpg&name=small


@fangshimin

Oct 22
פڿʹԺĽȥԺ֤ϸ
սڿݵΪⶳԮڰ׹̸Ľְҵ⽻
ʼǵϰߣйػ顢ͨļ¼ôմ˽̡
https://pbs.twimg.com/media/EHhNq8RU8AAB7cP?format=jpg&name=small
https://pbs.twimg.com/media/EHhNrEYVUAASw0K?format=jpg&name=360x360
https://pbs.twimg.com/media/EHhNrEZVUAAHFVT?format=jpg&name=360x360
https://pbs.twimg.com/media/EHhNrEaU0AAQSph?format=jpg&name=360x360


@fangshimin

Oct 22
ѧҴ
https://twitter.com/i/status/1186793079799345152


@fangshimin

Oct 22
1.2׸Сƴɱ7żӪձ٣ֿſ
ֵܳţƤӡձʵϱ70ǰɱ
ձּ£һһƺԵʵ֪ǣվս
ٱм¼ģ˭Եȥһ¼¼ͿɽҴţƤ
https://pbs.twimg.com/media/EHhjkHZU0AE3vg8?format=jpg&name=900x900

Jimmy Chen
@chen3026_chen

Oct 22
΢Թˡ


@fangshimin
Replying to 
@chen3026_chen
ղˣڣ˱ƭӸжᡣ


@fangshimin

Oct 22
˴󵨡軪ˡ軪Ϊ
https://pbs.twimg.com/media/EHh2KYJVUAAuxpq?format=jpg&name=small
https://pbs.twimg.com/media/EHh2KYJUUAAHcBT?format=jpg&name=small


Yuxian Wang
@yuxian_wang95

Oct 22
ͬ˸mate30 ֪ǲpro ¼ָȫκһ˶
Ǹָơ


@fangshimin
Replying to 
@yuxian_wang95
 and 
@GuoLuming
Ҳ軪Ϊɱ˵ΪûΪѽɢ


@fangshimin

Oct 22
¡һóԶˮ
https://mp.weixin.qq.com/s/wRjCG8bqN1eTFgWtQA3Iqg



@fangshimin

Oct 22
࿹ҲҪеʷʶСźðСѧȥɱձ
ĹҲóսʱСѧʹ˭ѪȾģô
׾ӵƭܰӡձƭתΪʲôͶ
https://pbs.twimg.com/media/EHiGKRmU8AARXsR?format=jpg&name=small
https://pbs.twimg.com/media/EHiGKRmVAAE62Ka?format=jpg&name=small


@fangshimin

Oct 22

https://pbs.twimg.com/media/EHiQUVYUYAA5ntN?format=jpg
https://pbs.twimg.com/media/EHiQUVVU8AAHWa5?format=jpg
https://pbs.twimg.com/media/EHiQUVUU4AAwwAf?format=jpg
https://pbs.twimg.com/media/EHiQUVUUcAAoB6i?format=jpg


@fangshimin

Oct 22
ҰĬ飨Palmer's Indian mallowμ
Alkali heliotropeݹľտ(California bush sunflower)
ҽ(California fuchsia)
https://pbs.twimg.com/media/EHieq2RUcAAdvl9?format=jpg
https://pbs.twimg.com/media/EHierZJU4AAtOJo?format=jpg
https://pbs.twimg.com/media/EHierZIUYAA9mEv?format=jpg
https://pbs.twimg.com/media/EHierznUUAIkiNu?format=jpg


@fangshimin

Oct 22
פڿʹ15ҳ֤ĿǰΪֹԴһôǰա
ԱĽƱ綼ʧЧᵽפŷ˴ʹͣˣ
ڸǷǮ˿֧Ʊ֮ǰǸҪȻʡڿҪõԮ
ҪӦݵǡפŷ˴ʹԭҲˣ⴨ùı˽
https://pbs.twimg.com/media/EHipYeKUYAA_W12?format=jpg&name=small
https://pbs.twimg.com/media/EHipYe6U8AE2XVq?format=jpg&name=small
https://pbs.twimg.com/media/EHipYeLUUAEfW3f?format=jpg&name=small



@fangshimin

Oct 22
ζգմȥڹҪԱ³˵
ζڿͳͨ¼˵޹ͨ
ζƲԼ˵ûʹ̸۹Ǹͨǲ˵ѣҪȥ

https://pbs.twimg.com/media/EHiwD_oUcAAJKdf?format=jpg&name=small
https://pbs.twimg.com/media/EHiwETeUEAAlGoq?format=jpg&name=small
https://pbs.twimg.com/media/EHiwETdU0AAhIu-?format=jpg&name=small



@fangshimin

Oct 23
NBAһֱ˵ĪǶԵģ˲ƽӦ˵
õļֵ֮һȨ˵ɶ˵ɶ˲Ǳ
˵¡ӡձӦðѰҲ˰ɣ
https://pbs.twimg.com/media/EHi4T_KU4AApgic?format=jpg&name=900x900
https://pbs.twimg.com/media/EHi4UZuUUAAs1FP?format=jpg&name=small



@fangshimin

Oct 23
츺ڿԮ֤͵޴25
13û֤ʸ񣩵Ĺ͵Ա֤Ļң
Υֻ뿪ᾯ컹ҪѲ鷿ĵ豸
֤Ƴ5Сʱ͵ôȥҲҪ͸̨һˡ
https://pbs.twimg.com/media/EHmTo4aVUAAVeFN?format=jpg&name=small
https://pbs.twimg.com/media/EHmTpAYVUAAuYWB?format=jpg&name=small


@fangshimin

Oct 23
յйʴѧ人ͨΪ˿ٱУԺʿѡ
ظĶҸı׺ʵ¾ˡ֪
ʲôԺʿѡФѡԺʿŪٱҽ¶ֻ
ȥ人ԺȨҪھͿɹʡץˡ
https://pbs.twimg.com/media/EHmabFxVAAAof4u?format=jpg&name=900x900


@fangshimin

Oct 23
¼Уһֻǳ˹(greater angle wing)
https://pbs.twimg.com/media/EHmkIVnUUAAohru?format=jpg


@fangshimin

Oct 23
˵ڿཨǽڽһǽЧĴ
ǽīݸīˡ
https://pbs.twimg.com/media/EHmxz_sUUAA0b8S?format=jpg&name=small
https://pbs.twimg.com/media/EHmxz_jUcAAuRs0?format=jpg&name=small


@fangshimin

Oct 23
ӡ΢ųдˣ½ X XҵӰ죨󲹳棩
https://mp.weixin.qq.com/s/YTsP5ARiId1N8AuHaxq9Ag

۳
@fanyanchenqu

Oct 23
ŴѧĳĿƽڣˣԲ죩    ָ
֮󣬳ʱѷ벢ĸѣ˽ְ֧ɣ   
 ΪǱߵġ ʦλУҼǵ㿪
ͨӦΪǰӼ־


@fangshimin
Replying to 
@fanyanchenqu
ŴѧϵлӾ2009дġĿѧҲӦӢ


@fangshimin

Oct 23
ʳ¯Ǿ²˺ӣոľ²ˡ
https://pbs.twimg.com/media/EHnJJk7U8AAmKEP?format=jpg
https://pbs.twimg.com/media/EHnJJ5dU4AEJrqM?format=jpg


@fangshimin

Oct 23
Э飬佫ռǱ˵̣ʣ
Ŀ˵Ͷܡɹٳͣ𣬳
ľƲá
https://pbs.twimg.com/media/EHnT4IcUcAALf6v?format=jpg&name=small
https://pbs.twimg.com/media/EHnT4IdUYAASH6m?format=jpg&name=small



@fangshimin

Oct 23
ӰȨźˣҪȥ۸˭ˣquantum supremacy˼
ƵλɡơԽԡԣ
Ȩôϵģ
https://pbs.twimg.com/media/EHnbcJWVAAEYAQs?format=jpg&name=medium


@fangshimin

Oct 23
Ұɨ(California broom)ľﻨ(red bush monkey 
flower)ľ(Chaparral bush mallow)(California 
buckwheat)
https://pbs.twimg.com/media/EHnjncOU8AE-tjf?format=jpg
https://pbs.twimg.com/media/EHnjnkoUYAA1zlg?format=jpg
https://pbs.twimg.com/media/EHnjoB0UcAAE8of?format=jpg
https://pbs.twimg.com/media/EHnjoB1UEAMUERB?format=jpg


@fangshimin

Oct 23
ǽ215ǽýǽڳǽפߣǵվ23%ǽ
Ӣĵý31%ǽӰý塣
https://pbs.twimg.com/media/EHnsKxjU0AA9Asi?format=jpg&name=900x900


@fangshimin

Oct 23
յѼϴأдŸлˣ
Ǹ˵ذѴյĸлɹǲ֪ջȺá
https://pbs.twimg.com/media/EHn0RCEUwAAIK8o?format=jpg&name=medium


@fangshimin

Oct 23
ѦӿԼŮģҪ˫γ׬ǮȻҪ˵ѧĵĺôһ
һǹûë
https://pbs.twimg.com/media/EHn_LA2U8AAtofE?format=jpg&name=small
https://pbs.twimg.com/media/EHn_LBHUcAAd8QR?format=jpg&name=small



@fangshimin

Oct 24
ɣȷ紵˺ԺĻ䡣
https://pbs.twimg.com/media/EHrWTSVVUAAkESk?format=jpg


@fangshimin

Oct 24
ûҽѧʶϴԡǲȾ÷ģϴԡʱΪͬ
Ϊ·÷󲿷ͬ÷Ѵһ
뿪ܿˣԸУʹҺȵ50϶ֻܴ
5ӣԡػ޴ȾܣҪԲԡء޵ڡ
https://pbs.twimg.com/media/EHrf2U3UcAA3kxe?format=jpg&name=medium
https://pbs.twimg.com/media/EHrf2YLU8AAA43V?format=jpg&name=900x900



@fangshimin

Oct 24
й͵ҲָܹӢܱ˼·棬СʵƵĲ
ŷҲ2017һֶԱͣ
һϳＷ˼ʮ͵ɿͣʮˡ2003Ҳһϳ
﷢ּʮ͵ɿͣ19ˡֻĲйˣܱ಻Ķѡ
https://pbs.twimg.com/media/EHrrHk6UcAAv9XS?format=jpg&name=900x900


@fangshimin

Oct 24
Ƿᣬڷֻȥݽֻ20
һƬá
https://pbs.twimg.com/media/EHr3TryU0AAzyCO?format=jpg&name=small
https://pbs.twimg.com/media/EHr3Tr0U8AUyYFo?format=jpg&name=900x900


pepsi bottles
@yahoya8

Oct 24
Replying to 
@fangshimin
ĸĸ?
https://pbs.twimg.com/media/EHr5_fkVAAA9NGF?format=jpg&name=900x900


@fangshimin
Replying to 
@yahoya8
2017ڷֵƬ2019궡ڷƬ٣Ǹܱѧģ


@fangshimin

Oct 24
£֪ǽܲܿEvernoteǽҪĳ˺Żĳƪ
¡ӣйʴѧ人У¾ûѧܣ
https://t.co/vKh8BmQrVG?amp=1


~
@owlishx

Oct 24
һǿŵϵģʲôɵƲŻذУ
ڻϿһСľٱΪӵȨ֤У
ֱԲȫУʦ


@fangshimin
Replying to 
@owlishx
ӦУµ


@fangshimin

Oct 24
еͣšŦԼʱ͡ʢʱ˵
ʡ˰˼ʮԪȥԼĻһ˸߶ʡµ
˰ǮࡣǰĵֻܷŸ˹ֻ̨Ա
һҵϴԷʽѧò
https://pbs.twimg.com/media/EHsTf0xU0AAMIV_?format=jpg&name=900x900


@fangshimin

Oct 24
1982갣ɭ˾ڲо׼ȷԤ⵽2019̼ŨȽ
415ppmȫƽ½1϶ȡɭ˾ѧҽڹ֤
ʱ˵ѧңôЦȻɭ˾һ
ֱɢȫůƭֱ֣ǰŷıۣˣ
˾
https://pbs.twimg.com/media/EHsahVtU8AA-odU?format=jpg&name=small
https://pbs.twimg.com/media/EHsahVuU8AA50CU?format=jpg&name=900x900



@fangshimin

Oct 24
ƣĲỹĻھ͸һ˳Էˡ
https://pbs.twimg.com/media/EHsh_03UYAAjOVz?format=jpg&name=large


@fangshimin

Oct 24
70ڣϵͳһ̨IBMϵ1Уʹ
8̡2016ʱ˵Ҫϣ8ˡ
5ǰûˡ
https://pbs.twimg.com/media/EHstGO8VUAEIAaV?format=jpg&name=small
https://pbs.twimg.com/media/EHstGg-UEAERRlx?format=jpg&name=small



@fangshimin

Oct 24
Ժһ͵ԱŹ鱨ֳִҪ
鶶ǷΣҰȫɼûݣй˾
Ҫй˾ԴǲйŲţ
ǽôƣҲһƵƽ̨飿ȵȣ綼ǽڡ
https://pbs.twimg.com/media/EHs1r_jU0AE4SJe?format=jpg&name=medium



@fangshimin

Oct 24
Ұײ(vinegar weed)Ϸ̶(southern honeysuckle)
ҽ(California fuchsia)(tumbleweed)ֲ
https://pbs.twimg.com/media/EHs-vMkU8AAs6Xo?format=jpg
https://pbs.twimg.com/media/EHs-vTzUwAAO0G8?format=jpg
https://pbs.twimg.com/media/EHs-vdaUEAA1Y8J?format=jpg
https://pbs.twimg.com/media/EHs-vohVUAA1Edr?format=jpg



@fangshimin

Oct 24
ʵۡʦԷ˵ͳо˾ȨʹҲܲ顣
ʣͳڵɱˣҲܲ飿ʲôʦ
ǵġ
https://pbs.twimg.com/media/EHtG1_oUUAAopAd?format=jpg&name=medium



@fangshimin

Oct 25
˵˵ڿཨǽǿЦȻǺ˵ģ
ǻ˷ܵػƥȱ˵ģʲôЦͳ
ͳϿɣ˵ɿࡣ˭п󣿵ȶô
أûŹųȷڿཨǽͲˡ
https://pbs.twimg.com/media/EHtObmOUEAAX9pT?format=jpg&name=360x360
https://pbs.twimg.com/media/EHtObmNU8AAQNMc?format=jpg&name=360x360
https://pbs.twimg.com/media/EHtObmOUUAAOLrV?format=jpg&name=360x360
https://pbs.twimg.com/media/EHtObmOUcAAFdY8?format=jpg&name=360x360


@fangshimin

Oct 25
ӺŰĿ˵վפһܱӳĹۺ͵ζ
СҰضɱģ鼮Ŀȴ˵Ĺû
ɱˣСҰիɱġǸĸ汾ƭӻ˵
¶ڵġ⣬վפܱǸǲӣӳʿٶ
https://pbs.twimg.com/media/EHwmryTU0AUDuAg?format=jpg&name=small
https://pbs.twimg.com/media/EHwmrySU4AA6iKT?format=jpg&name=small
https://pbs.twimg.com/media/EHwmryTUEAA-td-?format=jpg&name=small
https://pbs.twimg.com/media/EHwmrySUEAADZai?format=jpg&name=small



@fangshimin

Oct 25
ʱ39й˲ӢøΡ˼Ӣŷ޹
û𵽱͵ɿڷΡС͵ǽ뻧͵ʱˤˣ
ʱҲҪû𵽱С͵ڷΣ
https://pbs.twimg.com/media/EHwvgjeU8AMUlTD?format=jpg&name=4096x4096


Eddie Cheng
@realEddieCheng

Oct 25
ŷ޻͵ɿڳǶûʲô
ע⡣ҪںˮǺȻһƯʬƬ
󻩣ķ֣ʷ͵ɹҵı߾ˡ


@fangshimin
Replying to 
@realEddieCheng
ΪƯǹģǱ˿üģӦṩҪ˵Ԯ
ڳ͵͵ģʹҪṩԮҲ



@rJTpWtshJF3iH97

Oct 25
Replying to 
@fangshimin
 and 
@nextdodo
ǲҪˣʱʲôʱ˵Ӣ˶Դ˸ģ


@fangshimin
Replying to 
@rJTpWtshJF3iH97
 and 
@nextdodo
Щǽˮ˻ˣ۾Ϲġ


@fangshimin

Oct 25
ܼȻлյĴѹ˻ΪǾӦûӭѹΪʲôҪ飬Ҫ
ҪһɱκɵѧQѧû
ҡ
https://pbs.twimg.com/media/EHw8jhmU4AAOEDH?format=jpg&name=900x900



@fangshimin

Oct 25
ˣβй
https://pbs.twimg.com/media/EHxE33AUwAAZI6h?format=jpg&name=4096x4096



@fangshimin

Oct 25
йʴѧ人У¾ûѧܣͼƬ棩
https://pbs.twimg.com/media/EHxNKYyUYAE-EYB?format=jpg&name=large
https://pbs.twimg.com/media/EHxNKYzVAAAuPkq?format=jpg&name=medium



@fangshimin

Oct 25
֡軪ˣȻǸˡСŮҲáӰ
֡
https://twitter.com/i/status/1187924866269208576



@fangshimin

Oct 25
ķ羰ߣʥ130ʾС
https://pbs.twimg.com/media/EHxjaeEUwAAzJT6?format=jpg&name=large



@fangshimin

Oct 25
򿨰ԽԵɴյ˵ǹȸ봨յֺĽ
Ϊ˹סָĿҲ13ǰ
ʼˡ˵ɺԺȡõκشɹ˵
Ľˡ
https://pbs.twimg.com/media/EHx0ZBfUEAAIL3p?format=jpg&name=900x900


@fangshimin

Oct 25
˻ᶨԽҰйѡױȡʸǽ˸ұ𣿱˾
Ѱ¡
https://pbs.twimg.com/media/EHx612cUwAAVsGs?format=jpg&name=medium



@fangshimin

Oct 25
Ժ˴ǽڵ֧η㣬ֻҪһ䣺ͻȻ⣬

https://pbs.twimg.com/media/EHyE5Q2UUAAasiY?format=jpg&name=900x900


May Zhou
@MayZhou53950152

Oct 26
ʵQQϷһƪ£˺ʺ³Ѹڰ
Ŀ˵Υ˺ţصĲ˺ȫᣬʧ̫


@fangshimin
Replying to 
@MayZhou53950152
³Ѹʶ軪


@fangshimin

Oct 25
ɽм
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huang lei
@palladiumhl

Oct 26
ʦʵڶСѧʲôϼɽϵĺ


@fangshimin
Replying to 
@palladiumhl
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