首页> 外文OA文献 >Optimizing site layout and material logistics planning during the construction of critical infrastructure projects
【2h】

Optimizing site layout and material logistics planning during the construction of critical infrastructure projects

机译:在关键基础设施项目建设期间优化场地布局和材料物流规划

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

Planning the site layout of construction projects is a crucial task that has a significant impact on construction cost, productivity, and safety. It involves the positioning and dynamic relocation of temporary facilities that are needed to support various construction activities on site such as offices, storage areas, workshops, and parking areas. Due to the complexity of the site layout planning problem, construction managers often perform this task using previous experience, ad-hoc rules, and first-come-first-serve approach which leads to ambiguity and even to inefficiency. Accordingly, a number of site layout planning models have been developed over the past three decades to support this important planning task.Despite the contributions of existing site layout planning models, they have a number of limitations that require additional research in five main areas in order to: (1) ensure global optimization of dynamic site layout planning; (2) integrate material procurement and site layout planning in a construction logistics planning model; (3) enhance the utilization of interior building spaces for material storage areas on congested construction sites; (4) enable automated retrieval and integration of all necessary data of construction logistics and site layout planning from available design and planning documents; and (5) consider security needs and constraints during the construction of critical infrastructure projects. Accordingly, the main objectives of this study are to: (1) formulate novel models of dynamic site layout planning (DSLP) that are capable of generating global optimal solutions of DSLP problems by considering the effects of first stage layout decisions on the layouts of subsequent stages; (2) develop an innovative optimization model for construction logistics planning (CLP) that is capable of integrating and optimizing the critical planning decisions of material procurement and material storage on construction sites; (3) formulate a new multi-objective optimization model for Congested Construction Logistics Planning that is capable of modeling and utilizing interior and exterior spaces in order to generate optimal logistics plans for congested construction sites; (4) develop a multi-objective automated system for construction logistics optimization that enables seamless retrieval and integration of project spatial, temporal, and logistics data as well as generating and reporting optimal plans of material procurement and site layouts; and (5) formulate a multi-objective optimization framework for planning construction site layouts and site security systems of critical infrastructure projects.First, two novel optimization models are developed that are capable of generating global optimal solutions of dynamic site layout planning in order to minimize resources travel and facilities relocation costs while complying with various site geometric constraints. The first model, DSLP-GA, is implemented using Genetic Algorithms while the second model, DSLP-ADP, is formulated using Approximate Dynamic Programming. These two models are designed to optimize facilities locations and orientations over construction stages to minimize total layout costs, which include the travel cost of construction resources and the cost of relocating temporary facilities between construction stages. Furthermore, the developed models consider four types of geometric constraints (boundary, overlap, distance, and zone constraints), which can be used to represent site space availability as well as construction operational and/or safety requirements. The performance of these two models is evaluated using two examples to illustrate their capabilities in generating global optimal plans solutions for dynamic site layout planning problems.Second, a novel model of construction logistics planning (CLP) is developed to enable the integration and simultaneous optimization of critical planning decisions of material procurement and material storage on construction sites. Procurement decision variables are designed to identify the fixed-ordering-periods of each material in every construction stage, while dynamic layout decision variables are designed to identify the locations and orientations of material storage areas and other temporary facilities in each construction stage. The model utilizes Genetic Algorithms to generate optimal material procurement and layout decisions in order to minimize four types of construction logistics costs: material ordering, financing, stock-out, and layout costs. The performance of the developed CLP model is evaluated using an application example that illustrates the model capabilities in: (1) generating optimal procurement decisions that minimize ordering, financing, and stock-out costs while considering site space availability; and (2) generating optimal layout decisions that minimize layout costs while complying with material storage space needs as well as imposed operational and safety geometric constraints. Third, an innovative multi-objective optimization model for congested construction logistics planning (C2LP) is developed to help planners in utilizing interior building spaces and generating optimal logistics plans that minimize total logistics cost while minimizing the adverse impacts of interior material storage on project schedule. Interior building space is represented as a set of non-identical rooms that can be defined based on project architectural drawings, while exterior space is modeled as a grid of locations with planner-specified fixed spacing. The model utilizes multi-objective Genetic Algorithms to formulate and optimize four categories of decision variables: (1) material procurement that includes fixed-ordering-periods of every material in each stage; (2) material storage plan that includes material storage type, exterior grid location, exterior orientation angle, and/or interior storage location for every material in each stage; (3) temporary facilities site layout that identifies exterior grid location and orientation angle for every temporary facility in each stage; and (4) schedule of noncritical activities that identifies the number of minimum-shifting-days within the total float of each non-critical activity. Interior material storage plans are generated using novel computational algorithms that consider four main types of interior storage constraints: room space capacities, room creation times, room partitioning times, and permissible material interior storage periods. Furthermore, new algorithms are developed to calculate interior and exterior material handling costs as well as shifting of noncritical activities. C2LP model utilizes Genetic Algorithms to generate optimal solutions that represent optimal tradeoffs between the two conflicting objectives of minimizing total logistics costs and project schedule criticality.Fourth, a prototype automated multi-objective optimization system for construction logistics planning is implemented to support construction planners in generating optimal plans of material logistics and site layout. The system is developed in four main modules: (1) site spatial data retrieval module; (2) schedule data retrieval module; (3) relational database module; and (4) graphical user interface module. The site spatial data retrieval module is designed to facilitate the automated retrieval of site exterior dimensions and building geometric attributes (building footprint, floors, and rooms) from existing IFC-Based Building Information Models of the project. The schedule data retrieval module is designed to obtain the list of construction activities, their relationships, construction materials, and activities material demand from schedule database files that are exported from Microsoft Project. The relational database module is designed to store and integrate project spatial, temporal, and logistics input data considering their interdependencies in order to eliminate data inconsistencies. The user interface module is designed to facilitate data input and reporting of generated optimal material logistics plans. Fifth, a multi-objective optimization framework is developed to enable construction planners of critical infrastructure projects to plan and optimize the implementation of site physical security systems and layout planning in order to minimize construction security risks and overall site costs. The framework is developed in four main phases: (1) risk identification and system modeling phase to identify security threats, attackers, and targets as well as site and security system geometric representation; (2) security lighting optimization phase to generate optimal tradeoff designs of fence and area lighting systems that consider the conflicting objectives of maximizing lighting performance while minimizing its system cost; (3) security-cost optimization phase to generate optimal site security systems that quantifies and simultaneously minimizes construction security risks and overall site cost; and (4) performance evaluation phase to test and analyze the performance of the proposed framework. The aforementioned developments of this research study contribute to enhancing the current practices of site layout and material logistics planning and can lead to: (1) increasing the efficiency and global optimality of construction site layout planning; (2) improving construction productivity that can be realized as a result of the early coordination between material procurement and site space planning; (3) enhancing the utilization of interior building spaces for material storage areas while minimizing its possible negative impacts on construction operations and schedules; (4) increasing the security level on the construction sites of critical infrastructure projects; and (5) minimizing contractors site costs that cover the travel cost of resources on construction sites, material logistics, and site security systems.
机译:规划建设项目的场地布局是一项至关重要的任务,它对建设成本,生产率和安全性具有重大影响。它涉及临时设施的定位和动态迁移,这些临时设施是支持现场各种建筑活动(例如办公室,仓库,车间和停车场)所需的。由于场地布局规划问题的复杂性,施工经理经常使用以前的经验,临时规则和先到先得的方法来执行此任务,这会导致模棱两可甚至效率低下。因此,在过去的三十年中,已经开发了许多站点布局规划模型来支持这项重要的规划任务。尽管现有的站点布局规划模型做出了贡献,但它们存在许多局限性,需要在五个主要领域进行额外研究才能进行要:(1)确保动态站点布局规划的全局优化; (2)将物料采购和场地布局规划整合到建筑物流规划模型中; (3)加强在拥挤的建筑工地上的物料存放区内部建筑空间的利用; (4)从可用的设计和计划文件中自动检索和集成建筑物流和场地布局规划的所有必要数据; (5)在关键基础设施项目的建设过程中考虑安全需求和约束条件。因此,本研究的主要目标是:(1)制定动态站点布局规划(DSLP)的新颖模型,该模型能够通过考虑第一阶段布局决策对后续布局的影响来生成DSLP问题的全局最优解。阶段(2)为建筑物流计划(CLP)开发创新的优化模型,该模型能够集成和优化建筑工地材料采购和材料存储的关键计划决策; (3)为拥挤建设物流规划制定新的多目标优化模型,该模型能够对内部和外部空间进行建模和利用,从而为拥挤建设场地生成最优物流计划; (4)开发用于建筑物流优化的多目标自动化系统,该系统能够无缝检索和集成项目空间,时间和物流数据,以及生成和报告物料采购和场地布局的最佳计划; (5)制定用于规划关键基础设施项目的建筑场地布局和场地安全系统的多目标优化框架。首先,开发了两种新颖的优化模型,它们能够生成动态场地布局规划的全局最优解决方案,以最大程度地减少资源旅行和设施搬迁成本,同时遵守各种场地几何约束。第一个模型DSLP-GA使用遗传算法实现,而第二个模型DSLP-ADP使用近似动态编程制定。设计这两个模型是为了在施工阶段优化设施的位置和方向,以最大程度地降低总布局成本,其中包括建筑资源的差旅成本和在施工阶段之间迁移临时设施的成本。此外,已开发的模型考虑了四种类型的几何约束(边界,重叠,距离和区域约束),可用于表示场地空间的可用性以及施工操作和/或安全要求。通过两个示例对这两种模型的性能进行了评估,以说明它们在生成针对动态场地布局规划问题的全局最优计划解决方案中的能力。施工现场物料采购和物料存储的重要计划决策。采购决策变量旨在识别每个施工阶段中每种材料的固定订购期,而动态布局决策变量旨在识别每个施工阶段中物料存储区和其他临时设施的位置和方向。该模型利用遗传算法生成最佳的材料采购和布局决策,以最小化四种类型的建筑物流成本:材料订购,融资,缺货和布局成本。使用一个应用示例评估了开发的CLP模型的性能,该应用示例说明了该模型在以下方面的功能:(1)生成使订购,融资最小化的最佳采购决策,以及在考虑网站空间可用性的情况下的缺货成本; (2)生成最佳的布局决策,从而在满足材料存储空间需求以及施加的操作和安全几何约束的同时,将布局成本降至最低。第三,针对拥挤的建筑物流计划(C2LP)开发了创新的多目标优化模型,以帮助规划人员利用内部建筑空间并生成最佳物流计划,从而将总物流成本降至最低,同时将内部物料存储对项目进度的不利影响降至最低。内部建筑空间表示为一组可以根据项目建筑图纸定义的不同房间,而外部空间则建模为由规划人员指定的固定间距的位置网格。该模型利用多目标遗传算法来制定和优化四类决策变量:(1)物料采购,其中包括每个阶段中每种物料的固定订货期; (2)物料存储计划,包括每个阶段中每种物料的物料存储类型,外部网格位置,外部定向角度和/或内部存储位置; (3)临时设施场地布局,标识每个阶段中每个临时设施的外部网格位置和方向角; (4)非关键活动时间表,该时间表标识每个非关键活动的总浮动时间中的最小轮班天数。内部材料存储计划是使用新颖的计算算法生成的,该算法考虑了四种主要类型的内部存储约束:房间空间容量,房间创建时间,房间划分时间和允许的材料内部存储时间。此外,开发了新的算法来计算内部和外部物料搬运成本以及非关键活动的转移。 C2LP模型利用遗传算法生成最优解,代表了使总物流成本最小化和项目进度关键度最小的两个相互冲突的目标之间的最佳权衡。第四,实现了用于建筑物流规划的原型自动化多目标优化系统,以支持建筑规划人员进行发电物料物流和场地布置的最佳计划。该系统主要由四个主要模块开发:(1)场地空间数据检索模块; (2)进度数据检索模块; (3)关系数据库模块; (4)图形用户界面模块。场地空间数据检索模块旨在促进从项目的现有基于IFC的建筑物信息模型中自动检索场地外部尺寸和建筑物几何属性(建筑物占地面积,楼层和房间)。进度数据检索模块旨在从Microsoft Project导出的进度数据库文件中获取施工活动,它们之间的关系,建筑材料和活动材料需求的列表。关系数据库模块旨在存储和集成项目的空间,时间和物流输入数据,并考虑它们之间的相互依赖性,以消除数据不一致的情况。用户界面模块旨在促进数据输入和生成的最佳物料物流计划的报告。第五,开发了一个多目标优化框架,以使关键基础架构项目的建设计划人员能够计划和优化站点物理安全系统和布局规划的实施,以最大程度地降低建设安全风险和总体站点成本。该框架分为四个主要阶段:(1)风险识别和系统建模阶段,以识别安全威胁,攻击者,目标以及站点和安全系统的几何表示; (2)安全照明优化阶段,以考虑围栏和区域照明系统的最佳权衡设计,这些设计考虑了在最大化照明性能的同时最小化其系统成本的相互矛盾的目标; (3)安全成本优化阶段,以生成最佳的站点安全系统,该系统可以量化并同时最大程度地降低施工安全风险和总站点成本; (4)绩效评估阶段,以测试和分析所提出框架的绩效。本研究研究的上述进展有助于增强场地布局和材料物流规划的当前实践,并可以导致:(1)提高建筑场地布局规划的效率和全球最优性; (2)通过材料采购和场地空间规划的早期协调可以提高建筑生产率; (3)提高内部建筑空间作为物料存储区域的利用率,同时最大程度地减少其对施工作业和进度的负面影响; (四)提高关键基础设施项目施工现场的安全水平; (5)尽量减少承包商的工地成本,该成本包括建筑工地,材料物流和工地安全系统的资源差旅费用。

著录项

  • 作者

    Said Hisham M.;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号