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rTMS Improves Cognitive Function and Brain Network Connectivity in Patients With Alzheimer’s Disease
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作者 XU Gui-Zhi LIU Lin +4 位作者 GUO Miao-Miao WANG Tian GAO Jiao-Jiao JI Yong WANG Pan 《生物化学与生物物理进展》 北大核心 2025年第8期2131-2145,共15页
Objective Repetitive transcranial magnetic stimulation(rTMS)has demonstrated efficacy in enhancing neurocognitive performance in Alzheimer’s disease(AD),but the neurobiological mechanisms linking synaptic pathology,n... Objective Repetitive transcranial magnetic stimulation(rTMS)has demonstrated efficacy in enhancing neurocognitive performance in Alzheimer’s disease(AD),but the neurobiological mechanisms linking synaptic pathology,neural oscillatory dynamics,and brain network reorganization remain unclear.This investigation seeks to systematically evaluate the therapeutic potential of rTMS as a non-invasive neuromodulatory intervention through a multimodal framework integrating clinical assessments,molecular profiling,and neurophysiological monitoring.Methods In this prospective double-blind trial,12 AD patients underwent a 14-day protocol of 20 Hz rTMS,with comprehensive multimodal assessments performed pre-and postintervention.Cognitive functioning was quantified using the mini-mental state examination(MMSE)and Montreal cognitive assessment(MOCA),while daily living capacities and neuropsychiatric profiles were respectively evaluated through the activities of daily living(ADL)scale and combined neuropsychiatric inventory(NPI)-Hamilton depression rating scale(HAMD).Peripheral blood biomarkers,specifically Aβ1-40 and phosphorylated tau(p-tau181),were analyzed to investigate the effects of rTMS on molecular metabolism.Spectral power analysis was employed to investigate rTMS-induced modulations of neural rhythms in AD patients,while brain network analyses incorporating topological properties were conducted to examine stimulus-driven network reorganization.Furthermore,systematic assessment of correlations between cognitive scale scores,blood biomarkers,and network characteristics was performed to elucidate cross-modal therapeutic associations.Results Clinically,MMSE and MOCA scores improved significantly(P<0.05).Biomarker showed that Aβ1-40 level increased(P<0.05),contrasting with p-tau181 reduction.Moreover,the levels of Aβ1-40 were positively correlated with MMSE and MOCA scores.Post-intervention analyses revealed significant modulations in oscillatory power,characterized by pronounced reductions in delta(P<0.05)and theta bands(P<0.05),while concurrent enhancements were observed in alpha,beta,and gamma band activities(all P<0.05).Network analysis revealed frequency-specific reorganization:clustering coefficients were significantly decreased in delta,theta,and alpha bands(P<0.05),while global efficiency improvement was exclusively detected in the delta band(P<0.05).The alpha band demonstrated concurrent increases in average nodal degree(P<0.05)and characteristic path length reduction(P<0.05).Further research findings indicate that the changes in the clinical scale HAMD scores before and after rTMS stimulation are negatively correlated with the changes in the blood biomarkers Aβ1-40 and p-tau181.Additionally,the changes in the clinical scales MMSE and MoCA scores were negatively correlated with the changes in the node degree of the alpha frequency band and negatively correlated with the clustering coefficient of the delta frequency band.However,the changes in MMSE scores are positively correlated with the changes in global efficiency of both the delta and alpha frequency bands.Conclusion 20 Hz rTMS targeting dorsolateral prefrontal cortex(DLPFC)significantly improves cognitive function and enhances the metabolic clearance ofβ-amyloid and tau proteins in AD patients.This neurotherapeutic effect is mechanistically associated with rTMS-mediated frequency-selective neuromodulation,which enhances the connectivity of oscillatory networks through improved neuronal synchronization and optimized topological organization of functional brain networks.These findings not only support the efficacy of rTMS as an adjunctive therapy for AD but also underscore the importance of employing multiple assessment methods—including clinical scales,blood biomarkers,and EEG——in understanding and monitoring the progression of AD.This research provides a significant theoretical foundation and empirical evidence for further exploration of rTMS applications in AD treatment. 展开更多
关键词 transcranial magnetic stimulation Alzheimer’s disease power spectral density ELECTROENCEPHALOGRAM brain functional network
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Distributed power control algorithm based on game theory for wireless sensor networks 被引量:5
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作者 Na Chengliang Lu Dongxin +1 位作者 Zhou Tingxian Li Lihong 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2007年第3期622-627,共6页
Energy saving is the most important issue in research and development for wireless sensor networks. A power control mechanism can reduce the power consumption of the whole network. Because the character of wireless se... Energy saving is the most important issue in research and development for wireless sensor networks. A power control mechanism can reduce the power consumption of the whole network. Because the character of wireless sensor networks is restrictive energy, this paper proposes a distributed power control algorithm based on game theory for wireless sensor networks which objects of which are reducing power consumption and decreasing overhead and increasing network lifetime. The game theory and OPNET simulation shows that the power control algorithm converges to a Nash Equilibrium when decisions are updated according to a better response dynamic. 展开更多
关键词 wireless sensor networks power control game theory CONVERGENCE
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Application of fuzzy analytic hierarchy process and neural network in power transformer risk assessment 被引量:8
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作者 李卫国 俞乾 罗日成 《Journal of Central South University》 SCIE EI CAS 2012年第4期982-987,共6页
In operation,risk arising from power transformer faults is of much uncertainty and complicacy.To timely and objectively control the risks,a transformer risk assessment method based on fuzzy analytic hierarchy process(... In operation,risk arising from power transformer faults is of much uncertainty and complicacy.To timely and objectively control the risks,a transformer risk assessment method based on fuzzy analytic hierarchy process(FAHP) and artificial neural network(ANN) from the perspective of accuracy and quickness is proposed.An analytic hierarchy process model for the transformer risk assessment is built by analysis of the risk factors affecting the transformer risk level and the weight relation of each risk factor in transformer risk calculation is analyzed by application of fuzzy consistency judgment matrix;with utilization of adaptive ability and nonlinear mapping ability of the ANN,the risk factors with large weights are used as input of neutral network,and thus intelligent quantitative assessment of transformer risk is realized.The simulation result shows that the proposed method increases the speed and accuracy of the risk assessment and can provide feasible decision basis for the transformer risk management and maintenance decisions. 展开更多
关键词 fuzzy analytic hierarchy process risk assessment power transformer artificial neutral network
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Game-theoretic approach to power and admission control in hierarchical wireless sensor networks 被引量:2
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作者 Guofang Nan Zhifei Mao Minqiang Li 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2012年第2期216-224,共9页
Power efficiency and link reliability are of great impor- tance in hierarchical wireless sensor networks (HWSNs), espe- cially at the key level, which consists of sensor nodes located only one hop away from the sink... Power efficiency and link reliability are of great impor- tance in hierarchical wireless sensor networks (HWSNs), espe- cially at the key level, which consists of sensor nodes located only one hop away from the sink node called OHS. The power and admission control problem in HWSNs is comsidered to improve its power efficiency and link reliability. This problem is modeled as a non-cooperative game in which the active OHSs are con- sidered as players. By applying a double-pricing scheme in the definition of OHSs' utility function, a Nash Equilibrium solution with network properties is derived. Besides, a distributed algorithm is also proposed to show the dynamic processes to achieve Nash Equilibrium. Finally, the simulation results demonstrate the effec- tiveness of the proposed algorithm. 展开更多
关键词 hierarchical network power control admission con- trol game theory double-pricing scheme.
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A novel recurrent neural network forecasting model for power intelligence center 被引量:6
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作者 刘吉成 牛东晓 《Journal of Central South University of Technology》 EI 2008年第5期726-732,共7页
In order to accurately forecast the load of power system and enhance the stability of the power network, a novel unascertained mathematics based recurrent neural network (UMRNN) for power intelligence center (PIC) was... In order to accurately forecast the load of power system and enhance the stability of the power network, a novel unascertained mathematics based recurrent neural network (UMRNN) for power intelligence center (PIC) was created through three steps. First, by combining with the general project uncertain element transmission theory (GPUET), the basic definitions of stochastic, fuzzy, and grey uncertain elements were given based on the principal types of uncertain information. Second, a power dynamic alliance including four sectors: generation sector, transmission sector, distribution sector and customers was established. The key factors were amended according to the four transmission topologies of uncertain elements, thus the new factors entered the power intelligence center as the input elements. Finally, in the intelligence handing background of PIC, by performing uncertain and recursive process to the input values of network, and combining unascertained mathematics, the novel load forecasting model was built. Three different approaches were put forward to forecast an eastern regional power grid load in China. The root mean square error (ERMS) demonstrates that the forecasting accuracy of the proposed model UMRNN is 3% higher than that of BP neural network (BPNN), and 5% higher than that of autoregressive integrated moving average (ARIMA). Besides, an example also shows that the average relative error of the first quarter of 2008 forecasted by UMRNN is only 2.59%, which has high precision. 展开更多
关键词 load forecasting uncertain element power intelligence center unascertained mathematics recurrent neural network
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Forecasting increasing rate of power consumption based on immune genetic algorithm combined with neural network 被引量:1
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作者 杨淑霞 《Journal of Central South University》 SCIE EI CAS 2008年第S2期327-330,共4页
Considering the factors affecting the increasing rate of power consumption, the BP neural network structure and the neural network forecasting model of the increasing rate of power consumption were established. Immune... Considering the factors affecting the increasing rate of power consumption, the BP neural network structure and the neural network forecasting model of the increasing rate of power consumption were established. Immune genetic algorithm was applied to optimizing the weight from input layer to hidden layer, from hidden layer to output layer, and the threshold value of neuron nodes in hidden and output layers. Finally, training the related data of the increasing rate of power consumption from 1980 to 2000 in China, a nonlinear network model between the increasing rate of power consumption and influencing factors was obtained. The model was adopted to forecasting the increasing rate of power consumption from 2001 to 2005, and the average absolute error ratio of forecasting results is 13.521 8%. Compared with the ordinary neural network optimized by genetic algorithm, the results show that this method has better forecasting accuracy and stability for forecasting the increasing rate of power consumption. 展开更多
关键词 IMMUNE GENETIC algorithm neural network power CONSUMPTION INCREASING RATE FORECAST
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Multi-agent and ant colony optimization for ship integrated power system network reconfiguration 被引量:5
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作者 WANG Zheng HU Zhiyuan YANG Xuanfang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2022年第2期489-496,共8页
Electric power is widely used as the main energy source of ship integrated power system(SIPS), which contains power network and electric power network. SIPS network reconfiguration is a non-linear large-scale problem.... Electric power is widely used as the main energy source of ship integrated power system(SIPS), which contains power network and electric power network. SIPS network reconfiguration is a non-linear large-scale problem. The reconfiguration solution influences the safety and stable operation of the power system. According to the operational characteristics of SIPS, a simplified model of power network and a mathematical model for network reconfiguration are established. Based on these models, a multi-agent and ant colony optimization(MAACO) is proposed to solve the problem of network reconfiguration. The simulations are carried out to demonstrate that the optimization method can reconstruct the integrated power system network accurately and efficiently. 展开更多
关键词 ship integrated power system(SIPS) multi-agent and ant colony optimization(MAACO) network reconfiguration ring grid fault recovery
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Local adaptive transmit power assignment strategy for wireless sensor networks 被引量:1
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作者 赵学健 庄毅 王进 《Journal of Central South University》 SCIE EI CAS 2012年第7期1909-1920,共12页
A distributed local adaptive transmit power assignment (LA-TPA) strategy was proposed to construct a topology with better performance according to the environment and application scenario and prolong the network lifet... A distributed local adaptive transmit power assignment (LA-TPA) strategy was proposed to construct a topology with better performance according to the environment and application scenario and prolong the network lifetime.It takes the path loss exponent and the energy control coefficient into consideration with the aim to accentuate the minimum covering district of each node more accurately and precisely according to various network application scenarios.Besides,a self-healing scheme that enhances the robustness of the network was provided.It makes the topology tolerate more dead nodes than existing algorithms.Simulation was done under OMNeT++ platform and the results show that the LA-TPA strategy is more effective in constructing a well-performance network topology based on various application scenarios and can prolong the network lifetime significantly. 展开更多
关键词 wireless sensor network topology control transmit power assignment range assignment path loss exponent energycontrol coefficient ROBUSTNESS network lifetime
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Joint Predictive Control of Power and Rate for Wireless Networks 被引量:7
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作者 KONG Shu-Lan ZHANG Huan-Shui +1 位作者 ZHANG Zhao-Sheng ZHANG Cheng-Hui 《自动化学报》 EI CSCD 北大核心 2007年第7期761-764,共4页
为了在分布式的无线网络,预兆的力量和率控制计划减轻循环延期,为系统模型被建议也说明拥挤层次和输入延期而不是在一个网络推迟状态。有输入延期的一个测量反馈控制问题被最小化之间的差别的精力提出实际并且控制的需要的 signal-to-... 为了在分布式的无线网络,预兆的力量和率控制计划减轻循环延期,为系统模型被建议也说明拥挤层次和输入延期而不是在一个网络推迟状态。有输入延期的一个测量反馈控制问题被最小化之间的差别的精力提出实际并且控制的需要的 signal-to-interference-plus-noise 比率(SNR ) 层次,以及精力定序。解决这个问题,我们在场为控制的二个 Riccati 方程和在时间的评价推迟系统。一个完全的分析最佳的控制器被使用分离原则并且解决二个 Riccati 方程获得,在一个人是为随机的线性二次的规定的向后的方程,其它是标准过滤 Riccati 方程的地方。模拟结果说明建议力量和率控制计划的表演。 展开更多
关键词 无线网络 预知功率控制 卡尔曼过滤 时滞状态
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Detection of Subsurface Cavities in a Power Plant Through Artificial Neural Network from Micro-Gravity Data
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作者 Alireza Hajian Caro Lucas 《地学前缘》 EI CAS CSCD 北大核心 2009年第S1期59-59,共1页
Subsurface cavities are very susceptible subsurface locations for down-lifting of a dam construction.In order to detect the low-density zones of a power plant a micro-gravity survey was conducted in a site considered ... Subsurface cavities are very susceptible subsurface locations for down-lifting of a dam construction.In order to detect the low-density zones of a power plant a micro-gravity survey was conducted in a site considered for construction of a power plant site in Iran.First we gain the residual anomalies through bouger anomalies and then we design an Artificial Neural Network(ANN)which is trained by a set of training data.The ANN was tested for both synthetic and real data.For real data some suitable features are derivate from residual anomalies and applied to 展开更多
关键词 artificial NEURAL network power plant MICROGRAVITY CAVITY
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A Power Graded Data Gathering Mechanism for Wireless Sensor Networks
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作者 BI Yan-Zhong YAN Ting-Xin +1 位作者 SUN Li-Min WU Zhi-Mei 《自动化学报》 EI CSCD 北大核心 2006年第6期881-891,共11页
The data gathering manner of wireless sensor networks, in which data is forwarded towards the sink node, would cause the nodes near the sink node to transmit more data than those far from it. Most data gathering mecha... The data gathering manner of wireless sensor networks, in which data is forwarded towards the sink node, would cause the nodes near the sink node to transmit more data than those far from it. Most data gathering mechanisms nowdo not do well in balancing the energy consumption among nodes with different distances to the sink, thus they can hardly avoid the problem that nodes near the sink consume energy more quickly, which may cause the network rupture from the sink node. This paper presents a data gathering mechanism called PODA, which grades the output power of nodes according to their distances from the sink node. PODA balances energy consumption by setting the nodes near the sink with lower output power and the nodes far from the sink with higher output power. Simulation results show that the PODA mechanism can achieve even energy consumption in the entire network, improve energy efficiency and prolong the network lifetime. 展开更多
关键词 Wireless sensor network energy balance power grade data gathering
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Research of Rural Power Network Reactive Power Optimization Based on Improved ACOA
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作者 YU Qian ZHAO Yulin WANG Xintao 《Journal of Northeast Agricultural University(English Edition)》 CAS 2010年第3期48-52,共5页
In view of the serious reactive power loss in the rural network, improved ant colony optimization algorithm (ACOA) was used to optimize the reactive power compensation for the rural distribution system. In this stud... In view of the serious reactive power loss in the rural network, improved ant colony optimization algorithm (ACOA) was used to optimize the reactive power compensation for the rural distribution system. In this study, the traditional ACOA was improved in two aspects: one was the local search strategy, and the other was pheromone mutation and re-initialization strategies. The reactive power optimization for a county's distribution network showed that the improved ACOA was practicable. 展开更多
关键词 rural power network reactive power optimization ant colony optimization algorithm local search strategy pheromone mutation and re-initialization strategy
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Application of Interval Algorithm in Rural Power Network Planning
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作者 GU Zhuomu ZHAO Yulin 《Journal of Northeast Agricultural University(English Edition)》 CAS 2009年第3期57-60,共4页
Rural power network planning is a complicated nonlinear optimized combination problem which based on load forecasting results, and its actual load is affected by many uncertain factors, which influenced optimization r... Rural power network planning is a complicated nonlinear optimized combination problem which based on load forecasting results, and its actual load is affected by many uncertain factors, which influenced optimization results of rural power network planning. To solve the problems, the interval algorithm was used to modify the initial search method of uncertainty load mathematics model in rural network planning. Meanwhile, the genetic/tabu search combination algorithm was adopted to optimize the initialized network. The sample analysis results showed that compared with the certainty planning, the improved method was suitable for urban medium-voltage distribution network planning with consideration of uncertainty load and the planning results conformed to the reality. 展开更多
关键词 rural power network optimization planning load uncertainty interval algorithm genetic/tabu search combination algorithm
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Transmission Characteristics of the Electric Power Dispatching Data Network 被引量:2
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作者 LI Gaowang JU Wenyun DUAN Xianzhong SHI Dongyuan 《中国电机工程学报》 EI CSCD 北大核心 2012年第22期I0019-I0019,共1页
关键词 调度数据网络 传输特性 电力系统 数据传输模型 指示器
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考虑季节性与趋势特征的光伏功率预测模型研究 被引量:1
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作者 王东风 李青博 +1 位作者 张博洋 黄宇 《太阳能学报》 北大核心 2025年第3期348-356,共9页
针对光伏功率预测中未充分考虑光伏功率季节性与趋势特征的问题,提出一种基于Neural-Prophet(NP)与深度神经网络的光伏功率预测方法。首先,通过互信息法筛选出影响光伏功率的主要因素,利用NP模型对光伏功率建模得到光伏功率的季节性与... 针对光伏功率预测中未充分考虑光伏功率季节性与趋势特征的问题,提出一种基于Neural-Prophet(NP)与深度神经网络的光伏功率预测方法。首先,通过互信息法筛选出影响光伏功率的主要因素,利用NP模型对光伏功率建模得到光伏功率的季节性与趋势特征,将季节性与趋势特征及主要影响因素作为模型输入。其次,采用改进残差网络(ResNet)和双向门控循环单元(BiGRU)建立NP-ResNet-BiGRU光伏功率预测模型并完成光伏功率预测。利用春夏秋冬四季的数据进行实验,结果显示相较于其他方法,所提方法的MAE至少提升7.44%,RMSE至少提升4.62%。 展开更多
关键词 光伏发电 预测 神经网络 残差网络 Neural-Prophet
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考虑灵活性资源传输精细化建模的配电网优化运行 被引量:1
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作者 刘帅 李华强 +2 位作者 武姝凝 游祥 陆杨 《电网技术》 北大核心 2025年第5期2024-2034,I0068-I0070,共14页
清洁能源大规模并网使配电网产生大量灵活性需求,随之带来的灵活性资源传输阻塞问题亟待解决。针对此问题,该文通过探究配电网的灵活性资源传输原理,构建计及配电网潮流的网络传输灵活性资源模型,并基于此提出一种考虑灵活性资源传输约... 清洁能源大规模并网使配电网产生大量灵活性需求,随之带来的灵活性资源传输阻塞问题亟待解决。针对此问题,该文通过探究配电网的灵活性资源传输原理,构建计及配电网潮流的网络传输灵活性资源模型,并基于此提出一种考虑灵活性资源传输约束的配电网日前优化运行方法。首先,综合考虑节点灵活性与网络灵活性构建配电网灵活性分析框架;然后分别构建配电网各节点的灵活性需求与资源模型;随后,结合虚拟潮流精细化构建网络传输灵活性资源模型,以描述灵活性资源传输与配电网潮流的耦合关系,体现节点电压与线路传输容量在灵活性资源传输过程中的限制作用,从而量化配电网实际运行中对灵活性资源的传输能力;最后,提出一种考虑灵活性资源传输约束的配电网日前优化运行方法。算例表明,该文所提的灵活性分析方法符合配电网的运行特点,能够有效减少实际运行中灵活性资源传输阻塞问题带来的影响,并降低配电网的运行成本,提升清洁能源的消纳率。 展开更多
关键词 配电网 灵活性 网络传输灵活性资源 虚拟潮流 优化运行
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基于多智能体深度强化学习的随机事件驱动故障恢复策略 被引量:2
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作者 王冲 石大夯 +3 位作者 万灿 陈霞 吴峰 鞠平 《电力自动化设备》 北大核心 2025年第3期186-193,共8页
为了减少配电网故障引起的失负荷,提升配电网弹性,提出一种基于多智能体深度强化学习的随机事件驱动故障恢复策略:提出了在电力交通耦合网故障恢复中的随机事件驱动问题,将该问题描述为半马尔可夫随机决策过程问题;综合考虑系统故障恢... 为了减少配电网故障引起的失负荷,提升配电网弹性,提出一种基于多智能体深度强化学习的随机事件驱动故障恢复策略:提出了在电力交通耦合网故障恢复中的随机事件驱动问题,将该问题描述为半马尔可夫随机决策过程问题;综合考虑系统故障恢复优化目标,构建基于半马尔可夫的随机事件驱动故障恢复模型;利用多智能体深度强化学习算法对所构建的随机事件驱动模型进行求解。在IEEE 33节点配电网与Sioux Falls市交通网形成的电力交通耦合系统中进行算例验证,结果表明所提模型和方法在电力交通耦合网故障恢复中有着较好的应用效果,可实时调控由随机事件(故障维修和交通行驶)导致的故障恢复变化。 展开更多
关键词 随机事件驱动 故障恢复 深度强化学习 电力交通耦合网 多智能体
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基于电压-功率灵敏度的有源配电网数据驱动电压协调控制策略 被引量:1
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作者 张波 文晓君 吴璇 《电力系统及其自动化学报》 北大核心 2025年第1期35-42,共8页
随着分布式光伏渗透率的不断提高,实现配电网电压的快速精确调控变得愈加重要。首先,建立多输入-多输出的电压-功率灵敏度BP神经网络回归预测模型,得到功率参数、节点电压与电压-功率灵敏度间的非线性映射关系;其次,构建高比例光伏有源... 随着分布式光伏渗透率的不断提高,实现配电网电压的快速精确调控变得愈加重要。首先,建立多输入-多输出的电压-功率灵敏度BP神经网络回归预测模型,得到功率参数、节点电压与电压-功率灵敏度间的非线性映射关系;其次,构建高比例光伏有源配电网电压协调控制策略,基于电压-功率灵敏度降序调控原则,通过无功补偿和有功削减结合的两阶段电压调控模式实现配电网节点电压的快速调控;最后,利用IEEE 33和IEEE 141节点典型配电系统的仿真,计算分析验证所提方法的正确性和有效性。 展开更多
关键词 BP神经网络 数据驱动 电压-功率灵敏度 电压协调控制 有源配电网
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基于物联网的光伏温室温度预测与环境监控系统 被引量:1
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作者 海涛 招兴业 +1 位作者 陆剑锋 王钧 《中国农机化学报》 北大核心 2025年第2期75-82,共8页
针对大型温室群普遍存在耗能高、监测困难及温度调控滞后等问题,设计集光伏发电、低功耗广域物联网和长短期记忆网络预测技术于一体的温室监控系统。根据广西桂南地区的气候特征,通过Ecotect仿真得出屋顶光伏组件覆盖率在25%或33%时可... 针对大型温室群普遍存在耗能高、监测困难及温度调控滞后等问题,设计集光伏发电、低功耗广域物联网和长短期记忆网络预测技术于一体的温室监控系统。根据广西桂南地区的气候特征,通过Ecotect仿真得出屋顶光伏组件覆盖率在25%或33%时可兼顾光伏发电和温室内部采光效果。监控系统利用LoRa和NB—IoT技术混合组网实现环境参数的无线采集,上位机结合云平台及物联网技术对温室环境进行远程监控,并运用采集数据训练WOA—LSTM模型为温度预测提供支撑。测试表明,系统通信距离在500 m内,丢包率不超过3%,满足大型温室群对环境信息采集和稳定传输的需求,温度预测模型的均方根误差和平均绝对误差分别为0.476℃、0.367℃,可为温度预测和提前调控提供参考。该系统能够实现温室环境的实时监测、温度预测与调控,可为进一步提高温室种植作物的产量和质量提供借鉴。 展开更多
关键词 光伏温室 监控系统 温度预测 低功耗广域物联网 无线传感网络
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基于Bi-LSTM和改进残差学习的风电功率超短期预测方法 被引量:2
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作者 王进峰 吴盛威 +1 位作者 花广如 吴自高 《华北电力大学学报(自然科学版)》 北大核心 2025年第1期56-65,共10页
现有的方法在以风电功率时间序列拟合功率曲线时,难以表达风电功率数据所包含的趋势性和周期性等时间信息而出现性能退化问题,从而导致预测精度下降。为了解决性能退化问题从而提高风电功率时间序列预测的精度,提出了基于双向长短时记忆... 现有的方法在以风电功率时间序列拟合功率曲线时,难以表达风电功率数据所包含的趋势性和周期性等时间信息而出现性能退化问题,从而导致预测精度下降。为了解决性能退化问题从而提高风电功率时间序列预测的精度,提出了基于双向长短时记忆(Bi-LSTM)和改进残差学习的风电功率预测方法。方法由两个部分组成,第一部分是以Bi-LSTM为主的多残差块上,结合稠密残差块网络(DenseNet)与多级残差网络(MRN)的残差连接方式,并且在残差连接上使用一维卷积神经网络(1D CNN)来提取风电功率值中时序的非线性特征部分。第二部分是Bi-LSTM与全连接层(Dense)组成的解码器,将多残差块提取到的功率值时序非线性特征映射为预测结果。方法在实际运行的风电功率数据上进行实验,并与常见的残差网络方法和时间序列预测方法进行对比。方法相比于其他模型方法有着更高的预测精度以及更好的泛化能力。 展开更多
关键词 深度学习 残差网络 风电功率预测 双向长短时记忆 一维卷积神经网络
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