LGJun 2, 2021

Decision-making Oriented Clustering: Application to Pricing and Power Consumption Scheduling

arXiv:2106.01021v119 citations
Originality Incremental advance
AI Analysis

This addresses inefficiencies in energy resource management by tailoring clustering to specific decision tasks, offering a novel approach for applications like pricing and scheduling.

The paper tackles the problem of conventional clustering not accounting for the final decision-making task, leading to suboptimal resource use in energy management. It proposes a decision-making oriented clustering framework and algorithm, achieving a significant reduction in required clusters for power consumption scheduling.

Data clustering is an instrumental tool in the area of energy resource management. One problem with conventional clustering is that it does not take the final use of the clustered data into account, which may lead to a very suboptimal use of energy or computational resources. When clustered data are used by a decision-making entity, it turns out that significant gains can be obtained by tailoring the clustering scheme to the final task performed by the decision-making entity. The key to having good final performance is to automatically extract the important attributes of the data space that are inherently relevant to the subsequent decision-making entity, and partition the data space based on these attributes instead of partitioning the data space based on predefined conventional metrics. For this purpose, we formulate the framework of decision-making oriented clustering and propose an algorithm providing a decision-based partition of the data space and good representative decisions. By applying this novel framework and algorithm to a typical problem of real-time pricing and that of power consumption scheduling, we obtain several insightful analytical results such as the expression of the best representative price profiles for real-time pricing and a very significant reduction in terms of required clusters to perform power consumption scheduling as shown by our simulations.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes