A novel port call optimization framework: A case study of chemical tanker operations

2022 ◽  
Vol 102 ◽  
pp. 101-114
Author(s):  
Jaeyoung Cho ◽  
Brian Craig ◽  
Mansik Hur ◽  
Gino J. Lim
2020 ◽  
Vol 142 (9) ◽  
Author(s):  
Jeffery Ryan Anderson ◽  
Beshah Ayalew

Abstract In the context of minimum-time vehicle maneuvering, previous works have shown that different professional drivers drive differently while achieving nearly identical performance. In this paper, a cascaded optimization framework is presented for modeling individual driving styles of professional drivers. Therein, an inner loop model predictive controller (MPC) finds the optimal vehicle inputs that minimize a blended-cost function over each receding horizon. The outer loop of this framework is an optimization computation which finds the optimal weights for each local MPC horizon that best fit data obtained from onboard vehicle measurements of the targeted drivers to the simulation of the maneuver under the cascaded control. This cascaded optimization is exercised for a case study on Sebring International Raceway where two different professional drivers were able to achieve nearly identical lap times while adopting different driving styles. It will be shown that this framework is able to model key differences in style between the two drivers during a particular corner. The models of the individual drivers are then fixed, and another optimization is used to tune tire parameters to suit each driving style and illustrate the utility of the approach.


Author(s):  
Mine Kaya ◽  
Shima Hajimirza

Abstract Engineering design is usually an iterative procedure where many different configurations are tested to yield a desirable end performance. When the design objective can only be measured by costly operations such as experiments or cumbersome computer simulations, a thorough design procedure can be limited. The design problem in these cases is a high cost optimization problem. Meta model-based approaches (e.g. Bayesian optimization) and transfer optimization are methods that can be used to facilitate more efficient designs. Transfer optimization is a technique that enables using previous design knowledge instead of starting from scratch in a new task. In this work, we study a transfer optimization framework based on Bayesian optimization using Gaussian Processes. The similarity among the tasks is determined via a similarity metric. The framework is applied to a particular design problem of thin film solar cells. Planar multilayer solar cells with different sets of materials are optimized to obtain the best opto-electrical efficiency. Solar cells with amorphous silicon and organic absorber layers are studied and the results are presented.


Energies ◽  
2018 ◽  
Vol 11 (10) ◽  
pp. 2832 ◽  
Author(s):  
Athila Santos ◽  
Zheng Ma ◽  
Casper Olsen ◽  
Bo Jørgensen

Microgrids are emerging as feasible solutions to handle local energy systems. Several factors influence the development of such systems, such as technical, economic, social, legal, and regulatory issues. These important aspects need to be addressed to design appropriate microscale projects that take into consideration adequate technology without underestimating local characteristics. This article aims to propose a framework design for microgrid optimization using technical, social, and economic analysis. The framework is presented through a small island case study that shows each step of the method. As a contribution, this work provides a multi-objective optimization framework with different criteria consideration, such as the inhabitants’ cost of living and inter-cultural aspects, instead of traditional technical and economic analysis. The results show the applicability of the proposed framework showing better alternatives when compared with actual or future improvements in the study case scenario.


2020 ◽  
Vol 14 (6) ◽  
pp. 1296-1312
Author(s):  
Saurajyoti Kar ◽  
Bahar Riazi ◽  
Patrick L. Gurian ◽  
Sabrina Spatari ◽  
Paul R. Adler ◽  
...  

Author(s):  
Endre Sandvik ◽  
Jørgen Bremnes Nielsen ◽  
Bjørn Egil Asbjørnslett ◽  
Eilif Pedersen ◽  
Kjetil Fagerholt

AbstractIn this paper, a model for implementation of sea passage operational scenarios in the context of simulation-based design of ships is presented. To facilitate the transition towards more energy-efficient shipping, the ability to evaluate and understand ship and ship system behaviour in operational conditions is central. By introducing an optimization model in virtual testing frameworks, operational scenarios can be generated that enhances scenario relevance and testing abilities. The optimization for simulation approach provides speed and course commands based on an optimization framework which factors in the operational considerations and sea state conditions in the area of operation. Impact on the understanding of ship system performance using simulation is assessed in a case study where a sea passage over the North Pacific is replicated for varying operational scenarios and seasons. It is found that the variation of operational scenario, affecting the sea state and speed relation, causes significant differences in required power and fuel consumption estimates. Sea passage control is found to be an important dimension in virtual testing approaches.


2012 ◽  
Vol 518-523 ◽  
pp. 1117-1122 ◽  
Author(s):  
Su Feng Wang ◽  
Shan Lin Yang

The initial allocation of carbon emission permits is always a challenge in aggregate cap due to the conflicts between equity and efficiency. In this article, we introduce a two-stage optimization framework to allocate permits in which the first stage is for equity by maximizing weighted information entropy and the second for efficiency by minimizing the average yearly energy consumption per GDP for all emitters. The allocation of carbon emission permits of 30 provinces within China is chosen as a case study to illustrate the application of this framework. The results show that the two-stage optimization method can provide a profound insight for emission abatement with a focus on balance of equity and efficiency for the policy-makers, especially in Non-Annex I countries.


2006 ◽  
Vol 8 (1) ◽  
pp. 46-57 ◽  
Author(s):  
Steven J. Cox ◽  
Sagit Shalel Levanon ◽  
Ailen Sanchez ◽  
Henry Lin ◽  
Brad Peercy ◽  
...  

2021 ◽  
Vol 2021 ◽  
pp. 1-15
Author(s):  
Changle Song ◽  
Julien Monteil ◽  
Jean-Luc Ygnace ◽  
David Rey

Traffic congestion is largely due to the high proportion of solo drivers during peak hours. Ridesharing, in the sense of carpooling, has emerged as a travel mode with the potential to reduce congestion by increasing the average vehicle occupancy rates and reduce the number of vehicles during commuting periods. In this study, we propose a simulation-based optimization framework to explore the potential of subsidizing ridesharing users, drivers, and riders, so as to improve social welfare and reduce congestion. We focus our attention on a realistic case study representative of the morning commute on Sydney’s M4 Motorway in Australia. We synthesize a network model and travel demand data from open data sources and use a multinomial logistic model to capture users’ preferences across different travel roles, including solo drivers, ridesharing drivers, ridesharing passengers, and a reserve option that does not contribute to congestion on the freeway network. We use a link transmission model to simulate traffic congestion on the freeway network and embed a fixed-point algorithm to equilibrate users’ mode choice in the long run within the proposed simulation-based optimization framework. Our numerical results reveal that ridesharing incentives have the potential to improve social welfare and reduce congestion. However, we find that providing too many subsidies to ridesharing users may increase congestion levels and thus be counterproductive from a system performance standpoint. We also investigate the impact of transaction fees to a third-party ridesharing platform on social welfare and traffic congestion. We observe that increasing the transaction fee for ridesharing passengers may help in mitigating congestion effects while improving social welfare in the system.


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