Litcius/Paper detail

Data-driven Models for Advanced Control of Acid Gas Treatment in Waste-to-energy Plants

Riccardo Bacci di Capaci, Gabriele Pannocchia, Alessandro Dal Pozzo, Giacomo Antonioni, Valerio Cozzani

2022IFAC-PapersOnLine13 citationsDOIOpen Access PDF

Abstract

This paper presents a study of identification and validation of data-driven models for the description of the acid gas treatment process, a key step of flue gas cleaning in waste-to-energy plants. The acid gas removal line of an Italian plant, based on the injection of hydrated lime, Ca(OH)2, for the abatement of hydrogen chloride, HCl, is investigated. The final goal is to minimize the feed rate of reactant needed to achieve the required HCl removal performance, also reducing as a consequence the production of solid process residues. Process data are collected during dedicated plant tests carried out by imposing Generalized Binary Noise (GBN) sequences to the flow rate of Ca(OH)2. Various input-output and state-space models are identified with success, and related model orders are optimized. The models are then validated on different datasets of routine plant operation. The proposed modeling approach appears reliable and promising for control purposes, once implemented into advanced model-based control structures.

Topics & Concepts

Process engineeringFlue gasLimeAcid gasProcess (computing)Pilot plantComputer scienceEnvironmental scienceWaste managementEngineeringMaterials scienceMetallurgyOperating systemFault Detection and Control SystemsAdvanced Control Systems OptimizationControl Systems and Identification