首页> 外文期刊>South African journal of industrial engineering >AN INTELLIGENT RTP-BASED HOUSEHOLD ELECTRICITY SCHEDULING BY A GENETIC ALGORITHM IN SMART GRID
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AN INTELLIGENT RTP-BASED HOUSEHOLD ELECTRICITY SCHEDULING BY A GENETIC ALGORITHM IN SMART GRID

机译:遗传算法在智能电网中基于智能RTP的家庭调度

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Electricity scheduling for households based on real-time pricing (RTP) allows flexible and efficient consumption planning. However, this creates errors in predicted costs. Therefore this study used a genetic algorithm (GA) to reduce the error in predicted costs and suggested a model that offered better consumption planning. This model comprises a provider that supplies electricity and a subscriber that consumes electricity. Each subscriber has an energy management controller (EMC) that selects the optimal electricity scheduling. The provider and subscriber exchange real-time predicted costs and consumption plans to achieve an appropriate balance. During this process, the aforementioned prediction error — i.e., the difference between the predicted cost for each time slot and the final actual cost — occurs. This was addressed in this study using a GA. As a result, the presented model produced consumption plans with costs that were 22.60 per cent lower than the non-scheduled case, and 3.34 per cent lower than the model from a previous study. Furthermore, the fairness for each subscriber was improved by 15.96 per cent compared with the non-scheduled case, and by 0.62 per cent compared with the previous study model.
机译:基于实时定价(RTP)的家庭用电计划可以实现灵活高效的用电计划。但是,这在预计成本中产生了误差。因此,本研究使用遗传算法(GA)来减少预测成本中的误差,并提出了可以提供更好的消费计划的模型。该模型包括提供电力的提供商和消耗电力的订户。每个用户都有一个能源管理控制器(EMC),用于选择最佳用电计划。提供者和订户交换实时的预测成本和消耗计划以实现适当的平衡。在该过程中,发生上述预测误差,即每个时隙的预测成本与最终实际成本之差。本研究使用遗传算法解决了这一问题。结果,提出的模型产生的消费计划的成本比未计划的情况低了22.60%,比先前研究的模型低了3.34%。此外,与未计划的情况相比,每个订户的公平性提高了15.96%,与以前的研究模型相比,提高了0.62%。

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