《污水处理厂控制策略的标竿》

  • 来源专题:水体污染与防治领域信息门户
  • 编译者: 徐慧芳
  • 发布时间:2012-10-05
  •   Wastewater treatment plants are large non-linear systems subject to large perturbations in wastewater flow rate, load and composition. Nevertheless these plants have to be operated continuously, meeting stricter and stricter regulations. Many control strategies have been proposed in the literature for improved and more efficient operation of wastewater treatment plants.
  • 原文来源:http://www.iwapublishing.com/template.cfm?name=isbn9781843391463&type=forthcoming
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