A risk explicit interval linear programming model for uncertainty-based environmental economic optimization in the lake Fuxian watershed, China

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Abstract

The conflict of water environment protection and economic development has brought severe water pollution and restricted the sustainable development in the watershed. A risk explicit interval linear programming (REILP) method was used to solve integrated watershed environmental-economic optimization problem. Interval linear programming (ILP) and REILP models for uncertainty-based environmental economic optimization at the watershed scale were developed for the management of Lake Fuxian watershed, China. Scenario analysis was introduced into model solution process to ensure the practicality and operability of optimization schemes. Decision makers' preferences for risk levels can be expressed through inputting different discrete aspiration level values into the REILP model in three periods under two scenarios. Through balancing the optimal system returns and corresponding system risks, decision makers can develop an efficient industrial restructuring scheme based directly on the window of "low risk and high return efficiency" in the trade-off curve. The representative schemes at the turning points of two scenarios were interpreted and compared to identify a preferable planning alternative, which has the relatively low risks and nearly maximum benefits. This study provides new insights and proposes a tool, which was REILP, for decision makers to develop an effectively environmental economic optimization scheme in integrated watershed management. © 2013 Xiaoling Zhang et al.

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Zhang, X., Huang, K., Zou, R., Liu, Y., & Yu, Y. (2013). A risk explicit interval linear programming model for uncertainty-based environmental economic optimization in the lake Fuxian watershed, China. The Scientific World Journal, 2013. https://doi.org/10.1155/2013/824078

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