Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach

Predicting engine efficiency for environmental sustainability is crucial in the automotive industry. Accurate estimation and optimization of engine efficiency aid in vehicle design decisions, fuel efficiency enhancement, and emission reduction. Traditional methods for predicting efficiency are chall...

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Main Authors: İdris Cesur, Beytullah Eren
Format: Article
Language:English
Published: Sakarya University 2023-08-01
Series:Sakarya University Journal of Computer and Information Sciences
Subjects:
Online Access:https://dergipark.org.tr/tr/download/article-file/3194345
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author İdris Cesur
Beytullah Eren
author_facet İdris Cesur
Beytullah Eren
author_sort İdris Cesur
collection DOAJ
description Predicting engine efficiency for environmental sustainability is crucial in the automotive industry. Accurate estimation and optimization of engine efficiency aid in vehicle design decisions, fuel efficiency enhancement, and emission reduction. Traditional methods for predicting efficiency are challenging and time-consuming, leading to the adoption of artificial intelligence techniques like artificial neural networks (ANN). Neural networks can learn from complex datasets and model intricate relationships, making them promise for accurate predictions. By analyzing engine parameters such as fuel type, air-fuel ratio, speed, load, and temperature, neural networks can identify patterns influencing emission levels. These models enable engineers to optimize efficiency and reduce harmful emissions. ANN offers advantages in predicting efficiency by learning from vast amounts of data, extracting meaningful patterns, and identifying complex relationships. Accurate predictions result in better performance, fuel economy, and reduced environmental impacts. Studies have successfully employed ANN to estimate engine emissions and performance, showcasing its reliability in predicting engine characteristics. By leveraging ANN, informed decisions can be made regarding engine design, adjustments, and optimization techniques, leading to enhanced fuel efficiency and reduced emissions. Predicting engine efficiency using ANN holds promise for achieving environmental sustainability in the automotive sector.
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spelling doaj.art-11849a5d3ae64ea6ad29c5a9371c7e3e2024-01-18T16:44:35ZengSakarya UniversitySakarya University Journal of Computer and Information Sciences2636-81292023-08-016210511310.35377/saucis...131101428Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approachİdris Cesur0Beytullah Eren1SAKARYA UYGULAMALI BİLİMLER ÜNİVERSİTESİSAKARYA ÜNİVERSİTESİ, MÜHENDİSLİK FAKÜLTESİ, ÇEVRE MÜHENDİSLİĞİ BÖLÜMÜPredicting engine efficiency for environmental sustainability is crucial in the automotive industry. Accurate estimation and optimization of engine efficiency aid in vehicle design decisions, fuel efficiency enhancement, and emission reduction. Traditional methods for predicting efficiency are challenging and time-consuming, leading to the adoption of artificial intelligence techniques like artificial neural networks (ANN). Neural networks can learn from complex datasets and model intricate relationships, making them promise for accurate predictions. By analyzing engine parameters such as fuel type, air-fuel ratio, speed, load, and temperature, neural networks can identify patterns influencing emission levels. These models enable engineers to optimize efficiency and reduce harmful emissions. ANN offers advantages in predicting efficiency by learning from vast amounts of data, extracting meaningful patterns, and identifying complex relationships. Accurate predictions result in better performance, fuel economy, and reduced environmental impacts. Studies have successfully employed ANN to estimate engine emissions and performance, showcasing its reliability in predicting engine characteristics. By leveraging ANN, informed decisions can be made regarding engine design, adjustments, and optimization techniques, leading to enhanced fuel efficiency and reduced emissions. Predicting engine efficiency using ANN holds promise for achieving environmental sustainability in the automotive sector.https://dergipark.org.tr/tr/download/article-file/3194345engine efficiency predictionenvironmental sustainabilityfuel efficiency enhancementartificial neural networks (ann)emission reduction
spellingShingle İdris Cesur
Beytullah Eren
Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
Sakarya University Journal of Computer and Information Sciences
engine efficiency prediction
environmental sustainability
fuel efficiency enhancement
artificial neural networks (ann)
emission reduction
title Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
title_full Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
title_fullStr Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
title_full_unstemmed Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
title_short Predicting Effective Efficiency of the Engine for Environmental Sustainability: A Neural Network Approach
title_sort predicting effective efficiency of the engine for environmental sustainability a neural network approach
topic engine efficiency prediction
environmental sustainability
fuel efficiency enhancement
artificial neural networks (ann)
emission reduction
url https://dergipark.org.tr/tr/download/article-file/3194345
work_keys_str_mv AT idriscesur predictingeffectiveefficiencyoftheengineforenvironmentalsustainabilityaneuralnetworkapproach
AT beytullaheren predictingeffectiveefficiencyoftheengineforenvironmentalsustainabilityaneuralnetworkapproach