Abstract

The necessity to diminish the heliostats’ cost so that central tower concentrating solar power (CSP) systems can stride to the forefront to become the technology of choice for generating renewable electricity is obliging the industry to consider innovative designs, leading to new materials being implemented into the development of heliostats. Honeycomb sandwich composites offer a lightweight but stiff structure that appear to be an ideal substitute for existing heliostat mirrors and their steel supporting trusses, avoiding large drive units and reducing energy consumption. However, realizing a honeycomb sandwich composite as a heliostat, among a multitude of possible combinations can be tailored from, that delivers the best trade-off between the panel’s weight reduction (broadly equates to cost) and structural integrity is cumbersome and challenging due to the complex nonlinear material behaviour, along with the large number of design variables and performance constraints. We herein offer a simulation–optimization model for behaviour prediction and structural optimization of lightweight honeycomb sandwich composite heliostats utilizing artificial neural network (ANN) technique and particle swarm optimization (PSO) algorithm. Considering various honeycomb core configurations and several loading conditions, a thorough investigation was carried out to optimally choose the training algorithm, number of neurons in the hidden layer, activation function in a network and the suitable swarm size that delivers the best performance for convergence and processing time. Carried out for three case scenarios, each with different design requirements, the results showed that the proposed integrated ANN-PSO approach provides a useful, flexible and time-efficient tool for heliostat designers to predict and optimize the structural performance of honeycomb sandwich composite-based heliostats as per desired requirements. Knowing that heliostats in the field are not all subjected to the same wind conditions, this method offers flexibility to tailor heliostats independently, allowing them to be made lighter depending on the local wind speed in the field. This could lead to reductions in the size of drive units used to track the heliostat, and the foundations required to support these structures. Such reductions would deliver real cost savings, which are currently an impediment to the wider spread use of CSP systems.

Highlights

  • Among all concentrating solar power (CSP) technologies [1,2,3], central-receiver tower CSP systems are one of the most promising renewable technologies for large-scaleOne promising way of reducing the cost of heliostats would be to combine the mirror and its supporting structure into a single system

  • The aim of this work is to utilize artificial neural network (ANN) technique and particle swarm optimization (PSO) algorithm to establish a novel prediction–optimization (ANN-PSO) model that predicts the structural performance of honeycomb sandwich composite-based heliostats, and determines the optimum honeycomb core configuration leading to minimum self-weight of the heliostat’s sandwich composite panel while satisfying the necessary performance requirements

  • The present study was undertaken to investigate the utilization of artificial neural network (ANN) technique and particle swarm optimization (PSO) algorithm to establish a novel prediction–optimization (ANN-PSO) model that predicts the structural performance of honeycomb sandwich compositebased heliostats, and determines the optimum honeycomb core configuration leading to minimum self-weight of the heliostat’s sandwich composite panel while satisfying the structural performance requirements

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Summary

Introduction

Among all concentrating solar power (CSP) technologies [1,2,3], central-receiver tower CSP systems are one of the most promising renewable technologies for large-scaleOne promising way of reducing the cost of heliostats would be to combine the mirror and its supporting structure into a single system. Arabian Journal for Science and Engineering (2021) 46:12721–12742 are able to cope with the aerodynamic loads imposed upon them during operation [12,13,14,15]. In this vein, sandwich composite materials offer a lightweight but stiff structure that appear to be an ideal substitute for existing heliostat mirrors and their supporting trusses [16,17,18]. Based on the findings of this study, it was apparent that a sandwich composite heliostat mirror might maintain its structural integrity, to the appropriate optical requirements, and for the typical aerodynamic loading conditions.

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