• Title/Summary/Keyword: Heuristic hill climbing

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Workflow Scheduling Using Heuristic Scheduling in Hadoop

  • Thingom, Chintureena;Kumar R, Ganesh;Yeon, Guydeuk
    • Journal of information and communication convergence engineering
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    • v.16 no.4
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    • pp.264-270
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    • 2018
  • In our research study, we aim at optimizing multiple load in cloud, effective resource allocation and lesser response time for the job assigned. Using Hadoop on datacenter is the best and most efficient analytical service for any corporates. To provide effective and reliable performance analytical computing interface to the client, various cloud service providers host Hadoop clusters. The previous works done by many scholars were aimed at execution of workflows on Hadoop platform which also minimizes the cost of virtual machines and other computing resources. Earlier stochastic hill climbing technique was applied for single parameter and now we are working to optimize multiple parameters in the cloud data centers with proposed heuristic hill climbing. As many users try to priorities their job simultaneously in the cluster, resource optimized workflow scheduling technique should be very reliable to complete the task assigned before the deadlines and also to optimize the usage of the resources in cloud.

GA-VNS-HC Approach for Engineering Design Optimization Problems (공학설계 최적화 문제 해결을 위한 GA-VNS-HC 접근법)

  • Yun, YoungSu
    • Journal of Korea Society of Industrial Information Systems
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    • v.27 no.1
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    • pp.37-48
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    • 2022
  • In this study, a hybrid meta-heuristic approach is proposed for solving engineering design optimization problems. Various approaches in many literatures have been proposed to solve engineering optimization problems with various types of decision variables and complex constraints. Unfortunately, however, their efficiencies for locating optimal solution do not be highly improved. Therefore, we propose a hybrid meta-heuristic approach for improving their weaknesses. the proposed GA-VNS-HC approach is combining genetic algorithm (GA) for global search with variable neighborhood search (VNS) and hill climbing (HC) for local search. In case study, various types of engineering design optimization problems are used for proving the efficiency of the proposed GA-VNS-HC approach

A Search Algorithm for Heuristic Resource Temporal Planning (휴우리스틱 자원 시간 계획을 위한 탐색 알고리즘)

  • Shin Haeng-Chul;Kim In-Cheol
    • Proceedings of the Korean Information Science Society Conference
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    • 2006.06b
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    • pp.145-147
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    • 2006
  • 본 논문에서는 휴우리스틱 자원 시간 계획을 위한 새로운 탐색 알고리즘인 Strictly Enforced Hill-Climbing (SEHC)을 제안한다. 이 탐색 알고리즘은 FF 등의 계획기에 적용되어 매우 높은 효율성을 보인 Enforced Hill-Climbing (EHC)을 확장한 것이다. EHC는 목표를 찾아가는 과정 동안 매번 현재 상태에서 그 상태보다 더 낮은 휴우리스틱 값을 갖는 첫 번째 후손 상태를 찾아 넓이 우선 탐색을 펼치는 데 반해, 본 논문에서 제안하는 SEHC는 찾아진 첫 번째 후손 상태와 같은 깊이의 나머지 형제 상태들까지 탐색을 연장하여 최소의 휴우리스틱 값을 갖는 후손 상태를 찾아낸다. 이와 같은 SEHC 탐색방법은 매 주기마다 소량의 추가 탐색을 통해 탐색의 전체과정 동안 EHC 보다 우수한 탐색경로를 유지할 수 있도록 해준다. 본 논문에서는 다양한 영역의 계획문제를 대상으로 A* 알고리즘, EHC 알고리즘 등과의 비교실험을 통해 SEHC 알고리즘의 우수성을 알아본다.

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A Heuristic Search Planner Based on Component Services (컴포넌트 서비스 기반의 휴리스틱 탐색 계획기)

  • Kim, In-Cheol;Shin, Hang-Cheol
    • The KIPS Transactions:PartB
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    • v.15B no.2
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    • pp.159-170
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    • 2008
  • Nowadays, one of the important functionalities required from robot task planners is to generate plans to compose existing component services into a new service. In this paper, we introduce the design and implementation of a heuristic search planner, JPLAN, as a kernel module for component service composition. JPLAN uses a local search algorithm and planning graph heuristics. The local search algorithm, EHC+, is an extended version of the Enforced Hill-Climbing(EHC) which have shown high efficiency applied in state-space planners including FF. It requires some amount of additional local search, but it is expected to reduce overall amount of search to arrive at a goal state and get shorter plans. We also present some effective heuristic extraction methods which are necessarily needed for search on a large state-space. The heuristic extraction methods utilize planning graphs that have been first used for plan generation in Graphplan. We introduce some planning graph heuristics and then analyze their effects on plan generation through experiments.

ICALIB: A Heuristic and Machine Learning Approach to Engine Model Calibration (휴리스틱 및 기계 학습을 응용한 엔진 모델의 보정)

  • Kwang Ryel Ryu
    • Journal of the Korean Institute of Telematics and Electronics B
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    • v.30B no.11
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    • pp.84-92
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    • 1993
  • Calibration of Engine models is a painstaking process but very important for successful application to automotive industry problems. A combined heuristic and machine learning approach has therefore been adopted to improve the efficiency of model calibration. We developed an intelligent calibration program called ICALIB. It has been used on a daily basis for engine model applications, and has reduced the time required for model calibrations from many hours to a few minutes on average. In this paper, we describe the heuristic control strategies employed in ICALIB such as a hill-climbing search based on a state distance estimation function, incremental problem solution refinement by using a dynamic tolerance window, and calibration target parameter ordering for guiding the search. In addition, we present the application of amachine learning program called GID3*for automatic acquisition of heuristic rules for ordering target parameters.

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Integer Programming-based Local Search Techniques for the Multidimensional Knapsack Problem (다차원 배낭 문제를 위한 정수계획법 기반 지역 탐색 기법)

  • Hwang, Jun-Ha
    • Journal of the Korea Society of Computer and Information
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    • v.17 no.6
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    • pp.13-27
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    • 2012
  • Integer programming-based local search(IPbLS) is a kind of local search based on simple hill-climbing search and adopts integer programming for neighbor generation unlike general local search. According to an existing research [1], IPbLS is known as an effective method for the multidimensional knapsack problem(MKP) which has received wide attention in operations research and artificial intelligence area. However, the existing research has a shortcoming that it verified the superiority of IPbLS targeting only largest-scale problems among MKP test problems in the OR-Library. In this paper, I verify the superiority of IPbLS more objectively by applying it to other problems. In addition, unlike the existing IPbLS that combines simple hill-climbing search and integer programming, I propose methods combining other local search algorithms like hill-climbing search, tabu search, simulated annealing with integer programming. Through the experimental results, I confirmed that IPbLS shows comparable or better performance than the best known heuristic search also for mid or small-scale MKP test problems.

Dynamic Island Partition for Distribution System with Renewable Energy to Decrease Customer Interruption Cost

  • Zhu, Junpeng;Gu, Wei;Jiang, Ping;Song, Shan;Liu, Haitao;Liang, Huishi;Wu, Ming
    • Journal of Electrical Engineering and Technology
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    • v.12 no.6
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    • pp.2146-2156
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    • 2017
  • When a failure occurs in active distribution system, it will be isolated through the action of circuit breakers and sectionalizing switches. As a result, the network might be divided into several connected components, in which distributed generations could supply power for customers. Aimed at decreasing customer interruption cost, this paper proposes a theoretically optimal island partition model for such connected components, and a simplified but more practical model is also derived. The model aims to calculate a dynamic island partition schedule during the failure recovery time period, instead of a static islanding status. Fluctuation and stochastic characteristics of the renewable distributed generations and loads are considered, and the interruption cost functions of the loads are fitted. To solve the optimization model, a heuristic search algorithm based on the hill climbing method is proposed. The effectiveness of the proposed model and algorithm is evaluated by comparing with an existing static island partitioning model and intelligent algorithms, respectively.

Heuristics Method for Sequencing Mixed Model Assembly Lines with Hybridworkstation (혼합작업장을 고려한 혼합모델 조립라인의 투입순서결정에 관한 탐색적기법)

  • 김정자;김상천;공명달
    • Journal of Korean Society of Industrial and Systems Engineering
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    • v.21 no.48
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    • pp.299-310
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    • 1998
  • Actually mixed assembly line is mixed with open and close type workstation. This workstation is called hybridworkstation. The propose of this paper is to determine the sequencing of model that minimize line length for actual(hybridworkstation) mixed model assembly line. we developed three mathematical formulation of the problem to minimize the overall length of a line with hybrid station. Mathematical formulation classified model by operato schedule. Mixed model assembly line is combination program and NP-hard program. Thus computation time is often a critical factor in choosing a method of determining the sequence. This study suggests a tabu search technique which can provide a near optimal solution in real time and use the hill climbing heuristic method for selecting initial solution. Modified tabu search method is compared with MIP(Mixed Integer Program). Numerical results are reported to demonstrate the efficiency of the method.

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Greedy-based Neighbor Generation Methods of Local Search for the Traveling Salesman Problem

  • Hwang, Junha;Kim, Yongho
    • Journal of the Korea Society of Computer and Information
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    • v.27 no.9
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    • pp.69-76
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    • 2022
  • The traveling salesman problem(TSP) is one of the most famous combinatorial optimization problem. So far, many metaheuristic search algorithms have been proposed to solve the problem, and one of them is local search. One of the very important factors in local search is neighbor generation method, and random-based neighbor generation methods such as inversion have been mainly used. This paper proposes 4 new greedy-based neighbor generation methods. Three of them are based on greedy insertion heuristic which insert selected cities one by one into the current best position. The other one is based on greedy rotation. The proposed methods are applied to first-choice hill-climbing search and simulated annealing which are representative local search algorithms. Through the experiment, we confirmed that the proposed greedy-based methods outperform the existing random-based methods. In addition, we confirmed that some greedy-based methods are superior to the existing local search methods.