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Research on power engineering investment monitoring and early warning based on optimal segmentation theory

机译:基于最优细分理论的电力工程投资监测与预警研究

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There has been a defining problem of early warning threshold in power project investment, the accuracy and timeliness of early warning also can not be guaranteed. This paper is based on the optimal segmentation theory, combined with the actual situation of power project investment, splits historical engineering data optimally so as to determine the better segment number and give the early warning interval. The optimal partition theory can meet the requirements of the prior control in the pre planning decision stage, avoid the lag of cost management, at the same time, timely warning results makes a good bedding for correcting the investment deviation.
机译:电力项目投资中存在预警阈值的明确问题,预警的准确性和及时性也无法得到保证。本文基于最优分割理论,结合电力项目投资的实际情况,对历史工程数据进行最优分割,以确定较好的分割数,并给出预警区间。最优分配理论可以满足在计划前决策阶段进行事前控制的要求,避免了成本管理的滞后,同时及时的预警结果为纠正投资偏差提供了良好的基础。

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