An integrated TOPSIS–ORESTE-based decision-making framework for new energy investment assessment with cloud model

2022 ◽  
Vol 41 (1) ◽  
Author(s):  
Zhengmin Liu ◽  
Xinya Wang ◽  
Wenxin Wang ◽  
Di Wang ◽  
Peide Liu
2014 ◽  
Vol 672-674 ◽  
pp. 2140-2145
Author(s):  
Ying Peng Zhang ◽  
Zhi Fang Gao ◽  
Ding Hong Peng

For the problem of interval multiple attribute group decision-making, this paper studies the Cloud-PROMETHEE method. First, we can obtain the comprehensive weight. Second, we transform the interval decision matrix into cloud by cloud model because of randomness and fuzziness of date information. With the help of the PROMETHEE, we use overall priority index to determine the order of alternatives. Finally, an example concerns analysis, which is the risk analysis of planning process of new energy products, is given to show the feasibility and availability of the method.


2021 ◽  
Vol 242 ◽  
pp. 112544
Author(s):  
Nicola Caterino ◽  
Iolanda Nuzzo ◽  
Antonio Ianniello ◽  
Giorgio Varchetta ◽  
Edoardo Cosenza

2021 ◽  
Vol 11 (14) ◽  
pp. 6620
Author(s):  
Arman Alahyari ◽  
David Pozo ◽  
Meisam Farrokhifar

With the recent advent of technology within the smart grid, many conventional concepts of power systems have undergone drastic changes. Owing to technological developments, even small customers can monitor their energy consumption and schedule household applications with the utilization of smart meters and mobile devices. In this paper, we address the power set-point tracking problem for an aggregator that participates in a real-time ancillary program. Fast communication of data and control signal is possible, and the end-user side can exploit the provided signals through demand response programs benefiting both customers and the power grid. However, the existing optimization approaches rely on heavy computation and future parameter predictions, making them ineffective regarding real-time decision-making. As an alternative to the fixed control rules and offline optimization models, we propose the use of an online optimization decision-making framework for the power set-point tracking problem. For the introduced decision-making framework, two types of online algorithms are investigated with and without projections. The former is based on the standard online gradient descent (OGD) algorithm, while the latter is based on the Online Frank–Wolfe (OFW) algorithm. The results demonstrated that both algorithms could achieve sub-linear regret where the OGD approach reached approximately 2.4-times lower average losses. However, the OFW-based demand response algorithm performed up to twenty-nine percent faster when the number of loads increased for each round of optimization.


Author(s):  
Albert Wee Kwan Tan ◽  
David Gligor

Omnichannel is an evolving business model that has been gaining increased popularity among retailers. This business model allows firms to use a variety of channels to interact with their customers and fulfill their orders. Customers can order online and pick up later in the store, or they can choose to have the products delivered from a nearby store. Due to the complexity of fulfilling customer orders via omnichannel models, positioning inventory is a key challenge in supporting this type of business model. This article presents a framework for assisting companies in deciding under what condition to centralize or decentralize their inventory to fulfill customer orders without disrupting the shopping experience.


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