Estimation of Confidence Intervals for Nodal Maximum Power Consumption per Customer
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چکیده
The aim of this chapter is to calculate confidence intervals for the maximum power consumption per customer where it is not measured. The motivation behind this computation is to size with more accuracy, distribution transformers. Indeed, losses by hysteresis and by eddy currents being proportional to the volume of the magnetic circuit, it would be interesting to reduce the transformers size. But, distribution transformers must also be kept from being damaged due to overloading by approximately chose their size.
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