Dew Point modelling using GEP based multi objective optimization
Siddharth Shroff, Vipul Dabhi

TL;DR
This paper applies multi-objective gene expression programming with SPEA 2 to model dew point, producing accurate and simpler models that outperform traditional GEP in predictive accuracy and model complexity.
Contribution
It introduces a multi-objective GEP approach with SPEA 2 for dew point modeling, balancing accuracy and model simplicity, which is a novel application in this context.
Findings
SPEA 2 outperforms NSGA II in optimization tasks.
Multi-objective GEP yields more accurate and simpler dew point models.
The proposed method effectively predicts future dew point values.
Abstract
Different techniques are used to model the relationship between temperatures, dew point and relative humidity. Gene expression programming is capable of modelling complex realities with great accuracy, allowing at the same time, the extraction of knowledge from the evolved models compared to other learning algorithms. We aim to use Gene Expression Programming for modelling of dew point. Generally, accuracy of the model is the only objective used by selection mechanism of GEP. This will evolve large size models with low training error. To avoid this situation, use of multiple objectives, like accuracy and size of the model are preferred by Genetic Programming practitioners. Solution to a multi-objective problem is a set of solutions which satisfies the objectives given by decision maker. Multi objective based GEP will be used to evolve simple models. Various algorithms widely used for…
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Taxonomy
TopicsEvolutionary Algorithms and Applications · Advanced Multi-Objective Optimization Algorithms · Greenhouse Technology and Climate Control
