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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Hybrid interval AHP-entropy method for electricity user evaluation in smart electricity utilization
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Hybrid interval AHP-entropy method for electricity user evaluation in smart electricity utilization

机译:智能电力利用电力用户评估的混合间隔AHP熵方法

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Smart electricity utilization (SEU) is one of the most important components in a smart grid. It is crucial to evaluate efficiency, safety, and demand response capability of electricity users to achieve the smart use of electricity. The analytic hierarchy process (AHP) uses subjective criteria to determine index weights in multi-criteria decisionmaking problems, while the entropy method provides objectivity in determining index weights. Taking into account the uncertainty of expert scoring and user data, a hybrid interval analytic hierarchy process (IAHP) and interval entropy (IE) method is proposed for electricity user evaluation (EUE). Specifically, in the proposed method, electricity users are evaluated in terms of energy efficiency, safety monitoring, and demand response. The weights of EUE indices are calculated under uncertainty. The proposed approach derives subjective weights of EUE indices by the IAHP with expert scoring as input data, and determines objective weights of EUE indices by the IE method with user data as inputs. In order to obtain the optimal combined index weights, the two weights are normalized by a selected weight factor. Numerical case studies illustrate the effectiveness and advantages of the proposed approach, which combines subjective and objective information to derive the optimal combined index weights.
机译:智能电力利用率(SEU)是智能电网中最重要的组件之一。评估电力用户的效率,安全性和需求响应能力至关重要,以实现智能电力。分析层次处理(AHP)使用主观标准来确定多标准决策问题中的索引权重,而熵方法提供了确定索引权重的客观性。考虑到专家评分和用户数据的不确定性,提出了一种混合间隔分析层次处理(IAHP)和间隔熵(IE)方法,用于电力用户评估(EUE)。具体地,在所提出的方法中,在能效,安全监测和需求响应方面评估电力用户。在不确定性下计算EUE指数的权重。所提出的方法通过IEE评分作为输入数据的EAE指数的主观权重,并通过用户数据作为输入来确定IE方法的EUE指数的客观权重。为了获得最佳组合索引权重,两种权重由所选权重因子归一化。数值案例研究说明了所提出的方法的有效性和优点,其结合了主观和客观信息来得出最佳组合指数权重。

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