Abstract

Bayesian optimization has become a widely used tool in the optimization and machine learning communities. It is suitable to problems as simulation/optimization and/or with an objective function computationally expensive to evaluate. Bayesian optimization is based on a surrogate probabilistic model of the objective whose mean and variance are sequentially updated using the observations and an “acquisition” function based on the model, which sets the next observation at the most “promising” point. The most used surrogate model is the Gaussian Process which is the basis of well-known Kriging algorithms. In this paper, the authors consider the pump scheduling optimization problem in a Water Distribution Network with both ON/OFF and variable speed pumps. In a global optimization model, accounting for time patterns of demand and energy price allows significant cost savings. Nonlinearities, and binary decisions in the case of ON/OFF pumps, make pump scheduling optimization computationally challenging, even for small Water Distribution Networks. The well-known EPANET simulator is used to compute the energy cost associated to a pump schedule and to verify that hydraulic constraints are not violated and demand is met. Two Bayesian Optimization approaches are proposed in this paper, where the surrogate model is based on a Gaussian Process and a Random Forest, respectively. Both approaches are tested with different acquisition functions on a set of test functions, a benchmark Water Distribution Network from the literature and a large-scale real-life Water Distribution Network in Milan, Italy.

Highlights

  • Optimization of Water Distribution Networks (WDNs) operations has been a very important field for the Operation Research (OR) community at least in the last 40 years [1] and many tools from mathematical programming as well as metaheuristics have been proposed

  • We present the results obtained both on a set of test functions and two pump scheduling optimization (PSO) case studies: a benchmark well known in the PSO literature and a real-life WDN in Milan, Italy

  • Energy saving in WDN is one of the most challenging issues of smart urban water management and PSO is critical to reduce energy costs while guaranteeing a satisfactory water supply service

Read more

Summary

Introduction

Optimization of Water Distribution Networks (WDNs) operations has been a very important field for the Operation Research (OR) community at least in the last 40 years [1] and many tools from mathematical programming as well as metaheuristics have been proposed. An updated review on optimal water distribution is given in [2] where several classes of existing solutions, including linear programming, nonlinear programming, dynamic programming, metamodeling, heuristics, and metaheuristics are deeply analyzed and referenced. In this paper the authors are concerned with pump scheduling optimization (PSO): which pumps are to be operated and with which settings at different periods of the day, so that the energy cost, the largest operational cost for water utilities, is minimized. While mathematical programming approaches linearize/convexify the equations regulating the flow distribution in the WDN, the more recent optimization strategies use a hydraulic simulation software which can solve all the equations and provide computed values relatively to objective function (e.g. energy costs) and hydraulic feasibility (e.g. satisfaction of the demand, pressures within a given range, tanks level within min–max range, etc.)

Objectives
Methods
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call