25th Pan-Hellenic Conference on Informatics 2021
DOI: 10.1145/3503823.3503904
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Comparative evaluation of Machine Learning algorithms and Physical based models for the prediction of Vessel Speed in real life applications.

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Cited by 2 publications
(5 citation statements)
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“…Digital technology "3D printing" OR "AI" OR "Artificial intelligence" OR "big data" OR "blockchain" OR "cloud computing" OR "collaborative robot" OR "cobot" OR "cyber-physical system" OR "Internet of Things" OR "IoT" OR "machine learning" OR "digital twin" / Application fields "Industry 4.0" OR "intelligent manufacturing" OR "smart manufacturing" OR "industrial IoT" OR "intelligent logistics" OR "digital marketing" OR "network collaborative manufacturing" OR "smart factory" OR "smart sensor" OR "5G" / Green shipping practices "green shipping" OR "environment* shipping" OR "sustainab* shipping" OR "green mari* transport*" OR "environment* mari* transport*" OR "sustainab* mari* transport*" OR "green sea transport*" OR "environment* sea transport*" OR "sustainab* sea transport*" OR "green ocean transport*" OR "environment* ocean transport*" OR "sustainab* ocean transport*" OR "green air transport*" OR "environment* air transport*" OR "sustainab* air transport*" 21 CPP "commitment to sustainab*" OR "green practice*" OR "environment* compliance" OR "ISO 14001" OR "environment* protect*" OR "priority on environment*" OR "minimize* the environmental impact" OR "careful use of resources" OR "handl* waste streams" OR "improve* environment* performance" OR "pollution prevent*" 41 SD "shipping document*" OR "booking request" OR "booking confirm*" OR "shipping instruct*" OR "shipping invoice" OR "reduce paper" OR "simplify the shipping process*" OR "End-to-End EDI Solutions" OR "auto* shar* data" OR "cut* down paper*" 8 SE "environment* friendly equip*" OR "environment* friendly facilit*" OR "sustainab* friendly equip*" OR "sustainab* friendly facilit*" OR "green equip*" OR "green facilit*" OR "eco-label* equip*" OR "environmental audit" OR "ISO 14001" OR "evaluat* secondtier equipment suppliers' green practices." OR "environmentally friendly refrigerants" OR "eco-friendly equip*" OR "alternative material" 0 SC "shipper* cooperat*" OR "cooperat* with shipper*" OR "work* with customer* on eco-*" OR "involving customer* in clean* delivery" OR "enforce* recycling" OR "vehicle idling" OR "pack* waste collection" OR "green pack*" OR "sustainab* pack*" OR "environment* friendly pack*" OR " environment* manage*" OR "Clean Cargo Working Group" OR "CCWG" 18 SM "recover* used resources" OR "sale excess equipment" OR "sale excess facilities" OR "sale used materials" OR "sale packaging" OR "sale cartons" OR "collect* used oil" OR "vessel recycling" OR "disposal shipping materials" OR "minimize* environmental impacts caused by recycling" OR "recycling ratio" 0 SDC "green design" OR "environment* design" OR "sustain* design" OR "design for environment" OR "design for sustainab*" OR "environment* friendly design" OR "sustainab* friendly design" OR "Eco-design" OR "design for reuse*" OR "design for recycl*" OR "design for recovery*" OR "design for reduce*" OR "Voyage Efficiency System" OR "VES" OR "Vessel Speed Reduction" OR "VSR" OR " (Ehlers et al, 2022) Material and financial savings (Dias et al, 2022) Shipping accidents control (Sepehri et al, 2022)Optimizing shipping operations (Alexiou et al, 2021;Theodoropoulos et al, 2021)Safe and optimal shipping route (Lisowski, 2021) Cost-effectiveness and energy efficiency (Bui and Perera, 2020) continued on following page Ship dynamics monitoring ( Altarriba and Halonen, 2020) airline dynamic monitor...…”
Section: Groups Abstract Resultsmentioning
confidence: 99%
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“…Digital technology "3D printing" OR "AI" OR "Artificial intelligence" OR "big data" OR "blockchain" OR "cloud computing" OR "collaborative robot" OR "cobot" OR "cyber-physical system" OR "Internet of Things" OR "IoT" OR "machine learning" OR "digital twin" / Application fields "Industry 4.0" OR "intelligent manufacturing" OR "smart manufacturing" OR "industrial IoT" OR "intelligent logistics" OR "digital marketing" OR "network collaborative manufacturing" OR "smart factory" OR "smart sensor" OR "5G" / Green shipping practices "green shipping" OR "environment* shipping" OR "sustainab* shipping" OR "green mari* transport*" OR "environment* mari* transport*" OR "sustainab* mari* transport*" OR "green sea transport*" OR "environment* sea transport*" OR "sustainab* sea transport*" OR "green ocean transport*" OR "environment* ocean transport*" OR "sustainab* ocean transport*" OR "green air transport*" OR "environment* air transport*" OR "sustainab* air transport*" 21 CPP "commitment to sustainab*" OR "green practice*" OR "environment* compliance" OR "ISO 14001" OR "environment* protect*" OR "priority on environment*" OR "minimize* the environmental impact" OR "careful use of resources" OR "handl* waste streams" OR "improve* environment* performance" OR "pollution prevent*" 41 SD "shipping document*" OR "booking request" OR "booking confirm*" OR "shipping instruct*" OR "shipping invoice" OR "reduce paper" OR "simplify the shipping process*" OR "End-to-End EDI Solutions" OR "auto* shar* data" OR "cut* down paper*" 8 SE "environment* friendly equip*" OR "environment* friendly facilit*" OR "sustainab* friendly equip*" OR "sustainab* friendly facilit*" OR "green equip*" OR "green facilit*" OR "eco-label* equip*" OR "environmental audit" OR "ISO 14001" OR "evaluat* secondtier equipment suppliers' green practices." OR "environmentally friendly refrigerants" OR "eco-friendly equip*" OR "alternative material" 0 SC "shipper* cooperat*" OR "cooperat* with shipper*" OR "work* with customer* on eco-*" OR "involving customer* in clean* delivery" OR "enforce* recycling" OR "vehicle idling" OR "pack* waste collection" OR "green pack*" OR "sustainab* pack*" OR "environment* friendly pack*" OR " environment* manage*" OR "Clean Cargo Working Group" OR "CCWG" 18 SM "recover* used resources" OR "sale excess equipment" OR "sale excess facilities" OR "sale used materials" OR "sale packaging" OR "sale cartons" OR "collect* used oil" OR "vessel recycling" OR "disposal shipping materials" OR "minimize* environmental impacts caused by recycling" OR "recycling ratio" 0 SDC "green design" OR "environment* design" OR "sustain* design" OR "design for environment" OR "design for sustainab*" OR "environment* friendly design" OR "sustainab* friendly design" OR "Eco-design" OR "design for reuse*" OR "design for recycl*" OR "design for recovery*" OR "design for reduce*" OR "Voyage Efficiency System" OR "VES" OR "Vessel Speed Reduction" OR "VSR" OR " (Ehlers et al, 2022) Material and financial savings (Dias et al, 2022) Shipping accidents control (Sepehri et al, 2022)Optimizing shipping operations (Alexiou et al, 2021;Theodoropoulos et al, 2021)Safe and optimal shipping route (Lisowski, 2021) Cost-effectiveness and energy efficiency (Bui and Perera, 2020) continued on following page Ship dynamics monitoring ( Altarriba and Halonen, 2020) airline dynamic monitor...…”
Section: Groups Abstract Resultsmentioning
confidence: 99%
“…Researchers recommend innovative technologies such as AI to improve energy efficiency in shipping activities for SDC. For example, AI can capture the energy consumption features of ships powered by cleaner energy (Moya et al, 2022) and design environmental-friendly vessels (Alexiou et al, 2021). Meanwhile, machine learning and IoT can benefit the solutions to energy saving for SM and SDC (Hüffmeier & Johanson, 2021).…”
Section: Energy Efficiency-oriented Dgsi Practicesmentioning
confidence: 99%
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“…Data preprocessing is the next crucial step in the data-driven models. The data set that has been formed from the collected data can be used "as is" to train the machine learning algorithms or can be preprocessed [51]. The aim of the preprocessing is to reduce the size of the data set (and thus make it easier to handle) and to increase the prediction accuracy of the algorithms by removing misleading "noisy" input data.…”
Section: Preprocessing Methodsmentioning
confidence: 99%