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Assessment method for incentives and their optimization considering demand response of consumers

机译:考虑消费者需求响应的激励措施及其优化评价方法

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摘要

In a smart grid, communication technology allows short-term application of incentives in monetary form and thus dynamic pricing to the consumers. Incentives can help to reduce critical situations in grids, but for cost efficient application, they have to be optimized before the most suitable incentive is provided to the consumers. This paper introduces an assessment method for incentives taking into account demand response and the participation of individual consumers. Thereby, a model describing rational decision of individuals to incentives is presented. As the model uses adaptive neuro-fuzzy inference system (ANFIS) it can easily be trained. The assessment method includes heuristic optimization, namely the Mean-Variance Mapping Optimization (MVMO), which provides excellent performance in terms of convergence behavior and accuracy. MVMO can be used within the method to optimize the incentive with respects to the defined objective and given constraints. Structure of the model and procedure of the assessment method are illustrated, and performance of the method is demonstrated based on examples.
机译:在智能电网中,通信技术允许短期采用货币形式的激励措施,从而向消费者动态定价。激励措施可以帮助减少电网中的紧急情况,但是对于具有成本效益的应用,必须在向消费者提供最合适的激励措施之前对其进行优化。本文介绍了一种考虑到需求响应和个人消费者参与的激励措施评估方法。因此,提出了描述个人对激励的理性决策的模型。由于该模型使用自适应神经模糊推理系统(ANFIS),因此可以轻松进行训练。评估方法包括启发式优化,即均值方差映射优化(MVMO),它在收敛行为和准确性方面均具有出色的性能。可以在该方法内使用MVMO,以针对定义的目标和给定的约束优化激励。举例说明了评估方法的模型结构和程序,并通过实例演示了该方法的性能。

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