Abstract-Recently auction methods have been investigated as effective, decentralized methods for multi-robot coordination. Experimental research has shown great potential, but has not been complemented yet by theoretical analysis. In this paper we contribute a theoretical analysis of the performance of auction methods for multi-robot routing. We suggest a generic framework for auction-based multi-robot routing and analyze a variety of bidding rules for different team objectives. This is the first time that auction methods are shown to offer theoretical guarantees for such a variety of bidding rules and team objectives. I. INTRODUCTIONRobot teams are increasingly becoming a popular alternative to single robots for a variety of difficult robotic tasks, such as planetary exploration or planetary base assembly. Robot teams offer many advantages over single robots: robustness (due to redundancy), efficiency (due to parallelism), and flexibility (due to reconfigurability). However, an important factor for the success of a robot team is the ability to coordinate the team members in an effective way. Coordination involves the allocation and execution of individual tasks through an efficient, decentralized mechanism.In this paper, we focus on multi-robot routing, a class of problems where a team of mobile robots must visit a set of locations for some purpose (e.g., delivery or acquisition) with routes that optimize certain criteria (e.g., minimization of consumed energy, completion time, or average latency). Examples include search-and-rescue in areas hit by disasters, surveillance of a facility, placement of sensors in a sensor network, delivery of parts, and measurements over a wide area. Such routing problems, including Vehicle Routing Problems (VRPs) and several variants of the Traveling Salesman Problem (TSP), have been widely studied from a centralized point of view in the operations research literature, and more recently in robotics with a focus on decentralized approaches.Even in decentralized multi-robot coordination, some information should be communicated between the robots to facilitate efficient performance; it is desirable to enable good decision making while communicating as little information as possible. One promising approach of this type is the use of market-based mechanisms, in particular, auction-based methods, where the communicated information consists of bids robots place on various tasks and coordination is achieved by a process similar to winner determination in auctions.The efficiency of auction-based methods has been demonstrated experimentally [1]-[9], but there has been little theoretical study [8]. In this paper we make the following contributions: (1) we suggest a generic framework for auctionbased multi-robot routing, and (2) we derive and analyze six bidding rules for three team objectives (minimizing total cost, maximum cost, or average service cost), specifically, we provide lower and upper bounds on their performance relative to optimal performance. This is the first time that auction...
The findings of this work provided extensive understanding of the computational parameters that can be used with k-means. The results indicated that k-means has a potential to classify BCW dataset.
BackgroundOwing to the use of tobacco and the consumption of alcohol and adulterated food, worldwide cancer incidence is increasing at an alarming and frightening rate. Since the last decade of the twentieth century, lung cancer has been the most common cancer type. This study aimed to determine the global status of lung cancer and to evaluate the use of computational methods in the early detection of lung cancer.MethodsWe used lung cancer data from the United Kingdom (UK), the United States (US), India, and Egypt. For statistical analysis, we used incidence and mortality as well as survival rates to better understand the critical state of lung cancer.ResultsIn the UK and the US, we found a significant decrease in lung cancer mortalities in the period of 1990–2014, whereas, in India and Egypt, such a decrease was not much promising. Additionally, we observed that, in the UK and the US, the survival rates of women with lung cancer were higher than those of men. We observed that the data mining and evolutionary algorithms were efficient in lung cancer detection.ConclusionsOur findings provide an inclusive understanding of the incidences, mortalities, and survival rates of lung cancer in the UK, the US, India, and Egypt. The combined use of data mining and evolutionary algorithm can be efficient in lung cancer detection.
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