Local area spatial load forecasting at NSTAR

R. Żbikowski
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Abstract

NSTAR serves loads in Massachusetts, USA, and in particular provides service to the Boston metropolitan area. Past practices had employed a uniform load growth dispersion process that allocated system-wide projected load growth to substations on a pro-rata basis. This was found to be inaccurate in projecting the types of load increases experienced in recent history. The conclusion was that a more targeted projection of load growth that considered the local area environment was required. NSTAR worked with ABB to construct a spatial model of the service territory and employed the ABB spatial load forecasting application to develop a local area forecast of growth within its system. This effort was a highly data intensive one and relied heavily on the available IT databases and resources to construct the detailed spatial model of the service area. A computer simulation model was then employed to assess the potential areas of development as well as areas of growth that are stimulated by these areas of development. This was mapped to local area substations and adjusted to match the overall system growth expectations.
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NSTAR的局部区域空间负荷预测
NSTAR服务于美国马萨诸塞州,特别是波士顿大都会地区。过去的做法采用了统一的负荷增长分散过程,按比例将全系统预计负荷增长分配给变电站。这在预测近期历史上经历的负荷增加类型时被发现是不准确的。结论是,需要一个考虑到当地环境的更有针对性的负荷增长预测。NSTAR与ABB合作构建了服务区域的空间模型,并利用ABB的空间负荷预测应用程序在其系统内开发了局部区域的增长预测。这项工作是高度数据密集型的工作,并且严重依赖于可用的IT数据库和资源来构建服务区域的详细空间模型。然后采用计算机模拟模型来评估潜在的发展领域以及这些发展领域所刺激的增长领域。这被映射到本地变电站,并调整以匹配整个系统的增长预期。
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