Time and Supply Fairness in Electricity Distribution using $k$-times bin packing
Dinesh Kumar Baghel, Alex Ravsky, Erel Segal-Halevi

TL;DR
This paper introduces a new k-times bin-packing variant motivated by electricity fairness, generalizes algorithms for it, and applies these to real data to improve equitable electricity distribution.
Contribution
It defines k-times bin-packing, proves its relevance to electricity fairness, and develops algorithms that outperform heuristics in fair watt allocation.
Findings
Generalized bin-packing algorithms outperform existing heuristics.
Every electricity division problem can be solved by k-times bin-packing for some finite k.
Heuristic algorithms improve the fairness metric in watt allocation.
Abstract
Given items of different sizes and a fixed bin capacity, the bin-packing problem is to pack these items into the minimum number of bins such that the sum of the item sizes in each bin does not exceed the capacity. We define a new variant, k-times bin-packing (kBP), in which the goal is to pack the items so that each item appears exactly k times in k different bins. We generalize existing approximation algorithms for bin-packing to solve kBP and analyze their performance ratios. The fair electricity division problem motivates the study of kBP. The goal is to allocate the available supply among households using some fairness criteria, such as the egalitarian principle. We prove that every electricity division problem can be solved by k-times bin-packing for some finite k, which depends only on the number of households. We implement generalizations of the First-Fit and First-Fit Decreasing…
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