Sakeena Javaid, Muhammad Abdullah, N. Javaid, Tanzeela Sultana, J. Ahmed, Norin Abdul Sattar
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引用次数: 25
摘要
管理由智能电表提供的越来越多的电力信息在现代社会变得越来越有价值,也是一个非常具有挑战性的问题,特别是在住宅领域,维护用户的消费模式记录。零售商和公用事业公司有必要为消费者提供更有效的需求响应方案,以应对其消费模式的不确定性。为了处理消费者的不确定行为及其前所未有的高数据量,本文引入了深度神经模糊优化器进行有效的负载和成本优化。优化器的优化过程使用了三个前提参数:能耗、价格和当天时间,以及两个结果参数:峰值和成本降低。数据集取自Pecan Street incorporated网站,并使用Takagi Sugeno模糊推理系统对从参数的隶属函数中开发的规则进行评估。选择隶属函数(Membership function, MFs)作为高斯MFs来持续监测消费者的行为。通过仿真验证了该优化器的性能,表明了该优化器在成本优化和能效方面的鲁棒性。
Towards Buildings Energy Management: Using Seasonal Schedules Under Time of Use Pricing Tariff via Deep Neuro-Fuzzy Optimizer
Management of increasing amount of the electricity information provided by the smart meters is becoming more valuable and a very challenging issue in modern era, especially in residential sector for maintaining the records of consumers’ consumption patterns. It becomes the necessity of retailers and utilities to provide the consumers more effective demand response programs for handling the uncertainties of their consumption patterns. In order to deal with the unceratian behaviours of the consumers and their unprecedented high volume of data, this work introduces the deep neuro-fuzzy optimizer for effective load and cost optimization. Three premises parameters: energy consumption, price and time of the day and two consequents parameters: peak and cost reduction are used for the opti-mization process of the optimizer. The dataset is taken from the Pecan Street Incorporation site and Takagi Sugeno fuzzy inference system is used for the evaluation of the rules developed from the memebership functions of the parameters. Membership Functions (MFs) are chosen as Guassian MFs for continuously monitoring the consumers’ behaviours. Performance of this proposed energy optimizer is validated through the simulations which shows the robustness of optimizer in cost optimization and energy efficiency.