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Benefit Evaluation of Energy-Saving and Emission Reduction in Construction Industry Based on Rough Set Theory

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Ecological Chemistry and Engineering S
Special Issue: ECO-TECHNOLOGY AND ECO-INNOVATION FOR GREEN SUSTAINABLE GROWTH

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