TL;DR
This paper presents a multi-agent deep reinforcement learning approach to optimize wastewater treatment plants for sustainability, reducing environmental impacts and costs through life cycle analysis-based control strategies.
Contribution
It introduces a novel multi-agent reinforcement learning method with a life cycle perspective for sustainable WWTP optimization, considering multiple scenarios and impact transfer effects.
Findings
LCA-based optimization reduces environmental impacts significantly.
Cost-oriented control achieves similar performance with lower costs.
Retrofitting strategies impact multiple environmental indicators.
Abstract
Wastewater treatment plants are designed to eliminate pollutants and alleviate environmental pollution. However, the construction and operation of WWTPs consume resources, emit greenhouse gases (GHGs) and produce residual sludge, thus require further optimization. WWTPs are complex to control and optimize because of high nonlinearity and variation. This study used a novel technique, multi-agent deep reinforcement learning, to simultaneously optimize dissolved oxygen and chemical dosage in a WWTP. The reward function was specially designed from life cycle perspective to achieve sustainable optimization. Five scenarios were considered: baseline, three different effluent quality and cost-oriented scenarios. The result shows that optimization based on LCA has lower environmental impacts compared to baseline scenario, as cost, energy consumption and greenhouse gas emissions reduce to 0.890…
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Taxonomy
MethodsSpatio-temporal stability analysis
