scholarly journals Human Decision-Making Behavior Modeling for Human Multi-Robot Interaction System

2020 ◽  
Vol 53 (2) ◽  
pp. 10202-10207
Author(s):  
Wenhua Wu ◽  
Jie Huang ◽  
Zhenyi Zhang
Author(s):  
Barbara J. Barnett

This symposium addresses the characterization of human decision making within a complex environment for the purpose of developing improved decision support systems. All of the work presented in this symposium was conducted under a Navy research program entitled “Tactical Decision Making Under Stress” (TADMUS). The overall objective of the TADMUS program is to improve tactical decision making of anti-air warfare (AAW) crew members within the Aegis cruiser's combat information center (CIC) under conditions of stress and uncertainty. The unique aspect of this effort is that each presentation addresses decision making behavior, within a single domain, from a different perspective. The goal of each effort is to characterize some aspect of expert decision making performance within the AAW task environment, and to make recommendations for the resulting decision support system design based upon these characterizations. The result is a multi-faceted, human-centered approach to information organization and interface display design for a decision support system.


2008 ◽  
Vol 45 (3) ◽  
pp. 517-527 ◽  
Author(s):  
Choong Nyoung Kim ◽  
Kyung Hoon Yang ◽  
Jaekyung Kim

Energies ◽  
2020 ◽  
Vol 13 (6) ◽  
pp. 1412 ◽  
Author(s):  
Qiang Xing ◽  
Zhong Chen ◽  
Ziqi Zhang ◽  
Xiao Xu ◽  
Tian Zhang ◽  
...  

Electric vehicles (EVs) have attracted growing attention in recent years. However, most existing research has not utilized actual traffic data and has not considered real psychological decision-making of owners in analyzing the charging demand. On this basis, an urban EV fast-charging demand forecasting model based on a data-driven approach and human decision-making behavior is presented in this paper. In this methodology, Didi ride-hailing order trajectory data are firstly taken as the original dataset. Through data mining and fusion technology, the regenerated data and rules of traffic operation are obtained. Then, the single EV model with driving and charging behavior parameters is established. Furthermore, a human behavior decision-making model based on Regret Theory is introduced, which comprises the utility of time consumption and charging cost to plan driving paths and recommend fast-charging stations for vehicles. The rules obtained from data mining together with established models are combined to construct the ‘Electric Vehicles–Power Grid–Traffic Network’ fusion architecture. At last, the actual urban traffic network in Nanjing is selected as an example to design the fast-charging demand load experiments in different scenarios. The results demonstrate that this proposed model is able to effectively predict the spatio-temporal distribution characteristics of urban fast-charging demands, and it more realistically simulates the decision-making psychology of owners’ charging behavior.


Author(s):  
Lan Shao ◽  
Jouni Markkula

Human decision-making theories and formal models are increasingly used for developing advanced ICT-based intelligent systems and services. Decision filed theory (DFT) is one of the decision-making theories that has significant potential for practical applications in real-world decision-making situations. Successful empirical studied have shown that DFT theory is able to explain human decision-making behavior in real situations, and the model can be applied as a basis for ICT system and service design. In this chapter, the authors present the results of a systematic literature review conducted for analyzing and synthesizing the evidence of DFT development and its validated usage in different application areas. The results show that the interest in DFT and its applications has grown strongly during the last years. The basic model has been extended to cover more complex decision-making situations and its applications have been widening.


Author(s):  
Halid Kaplan ◽  
Muhammed Can

In the process of dealing with various problems that are related to the control and management of complex systems, uncertainty is always the issue. Most of the decisions to be made by engineers and governors are subject to a lack of data that causes uncertainty. Some information is not always accessible and insufficient at the time of decision-making (DM). It is important to use the concept of a human being's expert knowledge, so developing models to estimate and imitate human decision-making systems has been becoming necessary. This chapter will critically assess the fuzzy reliability theory and systems to demonstrate how fuzzy logic represents human behavior and non-linearity. The authors created a fuzzy inference system to model two different complex systems. Fuzzy approaches to real problems in DM are effective alternatives to traditional approaches. Fuzzy integrations improve DM models in five principal features: (1) expert knowledge, (2) uncertainty handling, (3) human and government behavior modeling, (4) flexible modeling, and (5) simpler representations.


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