학술논문

Space Load Forecasting Considering Distributed Energy and Electric Vehicles
Document Type
Conference
Source
2018 IEEE 3rd Advanced Information Technology, Electronic and Automation Control Conference (IAEAC) Advanced Information Technology, Electronic and Automation Control Conference (IAEAC), 2018 IEEE 3rd. :1733-1737 Oct, 2018
Subject
Computing and Processing
Robotics and Control Systems
Load modeling
Load forecasting
Electric vehicles
Predictive models
Data models
Mathematical model
Planning
load forecasting
electric vehicle
distributed power
LS-SVM correction model
Language
Abstract
Compared with the traditional load forecasting, the spatial load forecasting pays more attention to the load distribution in a certain local area or space, so it can better determine the selection and spatial layout of the electrical equipment, which plays an important role in the planning of the urban power grid. The rapid development of distributed energy and electric vehicles has broken the original law of urban load development, and makes the urban spatial load distribution more complex. The original load forecasting method based time series may bring large error to the prediction results, which is not conducive to the economy and reliability of urban power grid planning. Because the least squares support vector machine has strong nonlinear mapping ability, this paper establishes a LS-SVM based spatial load forecasting model for distributed and electric vehicle charging load based on the analysis of the core influence factors of various kinds of loads. Finally, a practical example in a certain area of central China shows the effectiveness of the proposed method.