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A Feature-Aided Multiple Model Algorithm for Maneuvering Target Tracking
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作者 Yiwei Tian Meiqin Liu +2 位作者 Senlin Zhang Ronghao Zheng shanling dong 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2024年第2期566-568,共3页
Dear Editor,This letter deals with the tracking problem for non-cooperative maneuvering targets based on the underwater sensor networks. Considering the acoustic intensity feature of underwater targets, a feature-aide... Dear Editor,This letter deals with the tracking problem for non-cooperative maneuvering targets based on the underwater sensor networks. Considering the acoustic intensity feature of underwater targets, a feature-aided multi-model tracking method for maneuvering targets is proposed. 展开更多
关键词 UNDERWATER Aided LETTER
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Multi-agent evaluation for energy management by practically scalingα-rank
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作者 Yiyun SUN Senlin ZHANG +3 位作者 Meiqin LIU Ronghao ZHENG shanling dong Xuguang LAN 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2024年第7期1003-1016,共14页
Currently,decarbonization has become an emerging trend in the power system arena.However,the increasing number of photovoltaic units distributed into a distribution network may result in voltage issues,providing chall... Currently,decarbonization has become an emerging trend in the power system arena.However,the increasing number of photovoltaic units distributed into a distribution network may result in voltage issues,providing challenges for voltage regulation across a large-scale power grid network.Reinforcement learning based intelligent control of smart inverters and other smart building energy management(EM)systems can be leveraged to alleviate these issues.To achieve the best EM strategy for building microgrids in a power system,this paper presents two large-scale multi-agent strategy evaluation methods to preserve building occupants’comfort while pursuing systemlevel objectives.The EM problem is formulated as a general-sum game to optimize the benefits at both the system and building levels.Theα-rank algorithm can solve the general-sum game and guarantee the ranking theoretically,but it is limited by the interaction complexity and hardly applies to the practical power system.A new evaluation algorithm(TcEval)is proposed by practically scaling theα-rank algorithm through a tensor complement to reduce the interaction complexity.Then,considering the noise prevalent in practice,a noise processing model with domain knowledge is built to calculate the strategy payoffs,and thus the TcEval-AS algorithm is proposed when noise exists.Both evaluation algorithms developed in this paper greatly reduce the interaction complexity compared with existing approaches,including ResponseGraphUCB(RG-UCB)andαInformationGain(α-IG).Finally,the effectiveness of the proposed algorithms is verified in the EM case with realistic data. 展开更多
关键词 Energy management Multi-agent deep reinforcement learning Strategy evaluation Power grid system
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