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The scheduling of by-product gases in by-product gas system,cogeneration system and production system is studied.All gas-consuming users are divided into three kinds according to their different characters and then a distribution model is built.A dynamic mixed integer linear programming (MILP) model for multiperiod optimization of by-product gas is performed to optimize by-product gas distribution to achieve total cost reduction.Case study shows that 6.2% operation cost is reduced by using the proposed model.

参考文献

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