可再生能源智能家居的能源优化

R. Chidzonga, B. Nleya
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引用次数: 0

摘要

本文着眼于优化小型住宅微电网的电力成本。每个家庭都有可再生能源发电能力,每日负荷被划分为必要负荷和可调度负荷。双重电价存在,一种用于购买,另一种用于输往电网。优化包括对合适负载的调度决策,以及根据可用性和现行价格从公用事业公司出售或购买的电量。假设时变能源参数的可用性,建立了一个全局优化问题,其解导致每个家庭购买和销售的最优能源量的量化。在实现全局优化时,去掉对信息可用性的不切实际的假设,一个只需要时变供需过程的电流值的在线算法通过仿真表明,分布式算法可以实现产消户用电的可信调度。
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Energy Optimization for a Smart Home with Renewable Generation
This article looks at optimizing cost of electricity for a small residential microgrid. Each household has renewable generation capability and daily load is portioned into essential and schedulable loads. Dual tariffs exist, for buying and the other for in-feed into the grid. The optimization consist of scheduling decisions for suitable loads as well amount of power to sell or procure from the utility depending on availability and prevailing pricing. Assuming availability of time-variant energy parameters, a global optimization problem is formulated whose solutions leads to quantification of the optimal quantity of energy purchased and sold for each of the households. When the unrealistic assumption of availability of information is removed from the implementation of the global optimization, an online algorithm that only requires the current values of the time varying supply and demand processes shows by simulation that the distributed algorithm can realise credible scheduling of prosumer household electricity usage.
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