Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship

In recent years, ship builders and owners have to face a great effort to develop new design and management methodologies that lead to a reduction in consumption and emissions during the operation of the fleet. In the present study, the optimization of an on-board energy system of a large cruise ship...

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Main Authors: Paolo Gnes, Piero Pinamonti, Mauro Reini
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/19/6917
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spelling doaj-742295bfed4749bebd135473d1f6b1512020-11-25T02:06:06ZengMDPI AGApplied Sciences2076-34172020-10-01106917691710.3390/app10196917Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise ShipPaolo Gnes0Piero Pinamonti1Mauro Reini2Department of Engineering and Architecture, University of Trieste, 34100 Trieste, ItalyPolytechnic Department of Engineering and Architecture, University of Udine, 33100 Udine, ItalyDepartment of Engineering and Architecture, University of Trieste, 34100 Trieste, ItalyIn recent years, ship builders and owners have to face a great effort to develop new design and management methodologies that lead to a reduction in consumption and emissions during the operation of the fleet. In the present study, the optimization of an on-board energy system of a large cruise ship is performed, both in terms of energy and of the overall dimensions of the system, while respecting the environmental constraint. In the simulation, a variable number of identical Organic Rankine Cycle (ORC)/Stirling units is considered as an energy recovery system, bottoming the main internal combustion engines, possibly integrating with the installation of photovoltaic panels, solar thermal collectors, absorption refrigeration machines and thermal storages. The optimization takes into account the effective optimal management of the energy system, which is different according to the different design choices of the energy recovery system. Two typical cruises are considered (summer and winter). To reduce the computational effort for the solution of the problem, a bi-level strategy has been developed, which prescribes managing the binary choice variables expressing the existence or not of the components by means of an evolutionary algorithm, while all the remaining choice variables are obtained by a mixed-integer linear programming model of the system (MILP) algorithm. The entire procedure can be defined within the commercial software modeFRONTIER<sup>®</sup>.https://www.mdpi.com/2076-3417/10/19/6917ship energy savingenergy system optimizationenergy recovery optimal operationbottom ORC/Stirlingbi-level genetic optimization
collection DOAJ
language English
format Article
sources DOAJ
author Paolo Gnes
Piero Pinamonti
Mauro Reini
spellingShingle Paolo Gnes
Piero Pinamonti
Mauro Reini
Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
Applied Sciences
ship energy saving
energy system optimization
energy recovery optimal operation
bottom ORC/Stirling
bi-level genetic optimization
author_facet Paolo Gnes
Piero Pinamonti
Mauro Reini
author_sort Paolo Gnes
title Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
title_short Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
title_full Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
title_fullStr Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
title_full_unstemmed Bi-Level Optimization of the Energy Recovery System from Internal Combustion Engines of a Cruise Ship
title_sort bi-level optimization of the energy recovery system from internal combustion engines of a cruise ship
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-10-01
description In recent years, ship builders and owners have to face a great effort to develop new design and management methodologies that lead to a reduction in consumption and emissions during the operation of the fleet. In the present study, the optimization of an on-board energy system of a large cruise ship is performed, both in terms of energy and of the overall dimensions of the system, while respecting the environmental constraint. In the simulation, a variable number of identical Organic Rankine Cycle (ORC)/Stirling units is considered as an energy recovery system, bottoming the main internal combustion engines, possibly integrating with the installation of photovoltaic panels, solar thermal collectors, absorption refrigeration machines and thermal storages. The optimization takes into account the effective optimal management of the energy system, which is different according to the different design choices of the energy recovery system. Two typical cruises are considered (summer and winter). To reduce the computational effort for the solution of the problem, a bi-level strategy has been developed, which prescribes managing the binary choice variables expressing the existence or not of the components by means of an evolutionary algorithm, while all the remaining choice variables are obtained by a mixed-integer linear programming model of the system (MILP) algorithm. The entire procedure can be defined within the commercial software modeFRONTIER<sup>®</sup>.
topic ship energy saving
energy system optimization
energy recovery optimal operation
bottom ORC/Stirling
bi-level genetic optimization
url https://www.mdpi.com/2076-3417/10/19/6917
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AT pieropinamonti bileveloptimizationoftheenergyrecoverysystemfrominternalcombustionenginesofacruiseship
AT mauroreini bileveloptimizationoftheenergyrecoverysystemfrominternalcombustionenginesofacruiseship
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