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Nonlinear system PID-type multi-step predictive control 被引量:6
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作者 YanZHANG ZengqiangCHEN ZhuzhiYUAN 《控制理论与应用(英文版)》 EI 2004年第2期201-204,共4页
A compound neural network was constructed during the process of identification and multi-step prediction. Under the PID-type long-range predictive cost function, the control signal was calculated based on gradient alg... A compound neural network was constructed during the process of identification and multi-step prediction. Under the PID-type long-range predictive cost function, the control signal was calculated based on gradient algorithm. The nonlinear controller’s structure was similar to the conventional PID controller. The parameters of this controller were tuned by using a local recurrent neural network on-line. The controller has a better effect than the conventional PID controller. Simulation study shows the effectiveness and good performance. 展开更多
关键词 multi-step predictive control Neural networks PID control Nonlinear system
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Multivariable PI Type Generalized Predictive Control 被引量:4
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作者 Chen, Zengqiang Zhao, Tianhang Yuan, Zhuzhi 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 1998年第2期8-13,共6页
This paper presents a multivariable generalized predictive controller with proportion and integration structure by modifying the quadratic criterion of the usual MGPC. The control performance has been improved greatl... This paper presents a multivariable generalized predictive controller with proportion and integration structure by modifying the quadratic criterion of the usual MGPC. The control performance has been improved greatly. The effectiveness of the controller is demonstrated by the simulation result. 展开更多
关键词 predictive control self-tuning control Multivariable control PI control
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A Content-Aware Bitrate Selection Method Using Multi-Step Prediction for 360-Degree Video Streaming 被引量:1
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作者 GAO Nianzhen YU Yifang +2 位作者 HUA Xinhai FENG Fangzheng JIANG Tao 《ZTE Communications》 2022年第4期96-109,共14页
A content-aware multi-step prediction control(CAMPC)algorithm is proposed to determine the bitrate of 360-degree videos,aim⁃ing to enhance the quality of experience(QoE)of users and reduce the cost of video content pr... A content-aware multi-step prediction control(CAMPC)algorithm is proposed to determine the bitrate of 360-degree videos,aim⁃ing to enhance the quality of experience(QoE)of users and reduce the cost of video content providers(VCP).The CAMPC algorithm first em⁃ploys a neural network to generate the content richness and combines it with the current field of view(FOV)to accurately predict the probability distribution of tiles being viewed.Then,for the tiles in the predicted viewport which directly affect QoE,the CAMPC algorithm utilizes a multi-step prediction for future system states,and accordingly selects the bitrates of multiple subsequent steps,instead of an instantaneous state.Meanwhile,it controls the buffer occupancy to eliminate the impact of prediction errors.We implement CAMPC on players by building a 360-degree video streaming platform and evaluating other advanced adaptive bitrate(ABR)rules through the real network.Experimental results show that CAMPC can save 83.5%of bandwidth resources compared with the scheme that completely transmits the tiles outside the viewport with the Dynamic Adaptive Streaming over HTTP(DASH)protocol.Besides,the proposed method can improve the system utility by 62.7%and 27.6%compared with the DASH official and viewport-based rules,respectively. 展开更多
关键词 DASH content-aware FOV prediction bitrate adaptation multi-step prediction generalized predictive control
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STABILITY AND STOCHASTIC CONVERGENCE OF SYNTHETIC GENERALIZED PREDICTIVE SELF-TUNING CONTROLLER
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作者 袁著祉 陈增强 《Science China Mathematics》 SCIE 1990年第6期758-768,共11页
<正> The synthetic generalized predictive adaptive algorithm has been greatly developed recently. This paper establishes some global stability and convergence results for the algorithm with a strict proof.
关键词 self-tuning control generalized predictive control stochastic control CONVERGENCE stability.
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