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Data-Driven Production Planning and Control Using Work Density for On-Site Building Construction
Data-Driven Production Planning and Control Using Work Density for On-Site Building Constr...
Data-Driven Production Planning and Control Using Work Density for On-Site Building Construction

상세정보

자료유형  
 학위논문 서양
최종처리일시  
20250211152731
ISBN  
9798384455226
DDC  
004
저자명  
Singh, Vishesh Vikram.
서명/저자  
Data-Driven Production Planning and Control Using Work Density for On-Site Building Construction
발행사항  
[Sl] : University of California, Berkeley, 2024
발행사항  
Ann Arbor : ProQuest Dissertations & Theses, 2024
형태사항  
317 p
주기사항  
Source: Dissertations Abstracts International, Volume: 86-03, Section: B.
주기사항  
Advisor: Tommelein, Iris D.
학위논문주기  
Thesis (Ph.D.)--University of California, Berkeley, 2024.
초록/해제  
요약The construction industry faces challenges due to escalating project complexity, demands for accelerated project delivery, and dwindling contractor margins. Traditional planning and control methods, characterized by deterministic and transformation-focused approaches, struggle to manage the dynamic interactions within production systems, including workflows and variabilities. Despite the potential of takt production and other location-based methods to streamline workflows and enhance project outcomes, their practical adoption remains limited due to several inherent challenges.This dissertation addresses the challenges in adopting location-based production planning and control methods by identifying key obstacles such as the non-repetitive nature of work, dynamic production rates, and the lack of objective and data-driven systems necessary for effective production planning and control. To mitigate these issues, I propose a comprehensive Data-Driven Production Framework (DDPF), which integrates planning and control components using work density to measure, store, and utilize actual production data. While this framework is developed using takt production principles, its final objectives are left to the users, making it relevant for other location-based methods.Employing a qualitative case study approach based on Design Science Research (DSR) principles, this research develops and validates artifacts including a comprehensive suite of tools and methods under the DDPF. I validated the application of these artifacts in real-world settings on two case studies, highlighting their practical applications and the benefits of using work density for planning and control.The first case study involves the application of the Work Density Method (WDM) through the ViWoLZo tool (Visual Workload Leveling and Zoning), demonstrating the utility of work density in enhancing decision-making during production planning by enabling an objective way to reduce variability and improve process flow, among several other production metrics proposed to support planning. Furthermore, the role of cost modeling is explored, reimagining cost from a production perspective and integrating cost considerations directly into the planning process to ensure cost-effective production decisions.In ViWoLZo, I utilize work density maps for each process step with non-uniformly spaced grid lines to calculate work density per cell and aggregate the cells into zones to calculate the workload per step per zone. However, its application highlighted challenges with manual and subjective data collection and analysis required to create the work density maps, leading to the development of the DDPF with a novel data model and data schema, leveraging real-time data collection and advanced data-driven methods. This data model moves away from the original definition of work density that is cell-based and is calculated using estimates, to a new definition that is location-based, where a location is a room or zone, and is measured empirically. Comparing it to the original definition, this work density can be considered cumulative work density for the cells in a room or a zone, hence referred to as measured workload.The second case study focuses on the DDPF's application in production control, utilizing advanced data collection and analysis methods, including a 360° camera-based tracking, and a production performance dashboard for supporting production control. Algorithms for work detection, such as the computer vision-based algorithm used in this research, are constantly improving. Current implementations are limited as they only work with objects in line-of-sight and with a certain range and accuracy, limited by the nature of the work to be detected, the resolution of the sensor, and the types of detection models used. I used the actual performance data to measure the duration of steps by location, representing the step's measured workload. A combined dataset with the workload for a location along with the contextual data describing what work was done, by whom, where, and how, are stored as historical work density. I used this dataset to fit machine learning (ML) models that can predict work density for future planning efforts.In this research, unsupervised learning methods were employed to understand the data and enhance the supervised learning-based prediction of work density. The investigation of the model's prediction performance demonstrated the DDPF's potential utility in production planning, achieving an expected error of 3.7 days compared to the historical data. The model's performance was constrained due to the limited amount of data collected and higher variability in the higher range of values of measured workloads. The distribution of measured workloads in the dataset has a mean of 20.44 days with a standard deviation of 19.03. To use the model on takt plans requiring smaller workloads, the ML model will have to be exposed to empirical data from processes with similar workloads. Although on separate occasions, the ML models have been trained and tested on real-world data and work density has been used for planning with ViWoLZo, and they are connected using the DDPF, the prediction model and ViWoLZo have not yet been integrated for use in real-world scenarios to plan future projects using predicted work density.The use of work density enabled ViWoLZo and the production performance dashboard to translate production system dynamics into a data-driven model. Interviews with field personnel confirmed the DDPF's effectiveness in implementing takt-like production to reduce process duration through increased concurrency, enhance stakeholder communication through transparency and visual management, and improve overall project performance through reduced variability and increased predictability of the production performance. The ML models and data analyses demonstrate that contextual data contain valuable insights that can streamline the implementation of location-based production planning and control methods. However, due to the small size of data collected from a single case study, the complex relationships within the data, and many features left to be collected and tested, these results are just the building blocks for further research.The dissertation concludes with recommendations for broadening the adoption of the DDPF, emphasizing the need for advancements in data collection technologies and analysis methods, and the need to standardize historical work density libraries. Improved performance combined with simpler implementation can potentially increase the adoption of these methods in the industry, and in turn, lead to further advancements.
일반주제명  
Computer science
키워드  
Construction project management
키워드  
Data-Driven Production Framework
키워드  
Lean construction
키워드  
Production planning and control
키워드  
Takt production
키워드  
Work Density Method
기타저자  
University of California, Berkeley Civil and Environmental Engineering
기본자료저록  
Dissertations Abstracts International. 86-03B.
전자적 위치 및 접속  
로그인 후 원문을 볼 수 있습니다.

MARC

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■1001  ▼aSingh,  Vishesh  Vikram.
■24510▼aData-Driven  Production  Planning  and  Control  Using  Work  Density  for  On-Site  Building  Construction
■260    ▼a[Sl]▼bUniversity  of  California,  Berkeley▼c2024
■260  1▼aAnn  Arbor▼bProQuest  Dissertations  &  Theses▼c2024
■300    ▼a317  p
■500    ▼aSource:  Dissertations  Abstracts  International,  Volume:  86-03,  Section:  B.
■500    ▼aAdvisor:  Tommelein,  Iris  D.
■5021  ▼aThesis  (Ph.D.)--University  of  California,  Berkeley,  2024.
■520    ▼aThe  construction  industry  faces  challenges  due  to  escalating  project  complexity,  demands  for  accelerated  project  delivery,  and  dwindling  contractor  margins.  Traditional  planning  and  control  methods,  characterized  by  deterministic  and  transformation-focused  approaches,  struggle  to  manage  the  dynamic  interactions  within  production  systems,  including  workflows  and  variabilities.  Despite  the  potential  of  takt  production  and  other  location-based  methods  to  streamline  workflows  and  enhance  project  outcomes,  their  practical  adoption  remains  limited  due  to  several  inherent  challenges.This  dissertation  addresses  the  challenges  in  adopting  location-based  production  planning  and  control  methods  by  identifying  key  obstacles  such  as  the  non-repetitive  nature  of  work,  dynamic  production  rates,  and  the  lack  of  objective  and  data-driven  systems  necessary  for  effective  production  planning  and  control.  To  mitigate  these  issues,  I  propose  a  comprehensive  Data-Driven  Production  Framework  (DDPF),  which  integrates  planning  and  control  components  using  work  density  to  measure,  store,  and  utilize  actual  production  data.  While  this  framework  is  developed  using  takt  production  principles,  its  final  objectives  are  left  to  the  users,  making  it  relevant  for  other  location-based  methods.Employing  a  qualitative  case  study  approach  based  on  Design  Science  Research  (DSR)  principles,  this  research  develops  and  validates  artifacts  including  a  comprehensive  suite  of  tools  and  methods  under  the  DDPF.  I  validated  the  application  of  these  artifacts  in  real-world  settings  on  two  case  studies,  highlighting  their  practical  applications  and  the  benefits  of  using  work  density  for  planning  and  control.The  first  case  study  involves  the  application  of  the  Work  Density  Method  (WDM)  through  the  ViWoLZo  tool  (Visual  Workload  Leveling  and  Zoning),  demonstrating  the  utility  of  work  density  in  enhancing  decision-making  during  production  planning  by  enabling  an  objective  way  to  reduce  variability  and  improve  process  flow,  among  several  other  production  metrics  proposed  to  support  planning.  Furthermore,  the  role  of  cost  modeling  is  explored,  reimagining  cost  from  a  production  perspective  and  integrating  cost  considerations  directly  into  the  planning  process  to  ensure  cost-effective  production  decisions.In  ViWoLZo,  I  utilize  work  density  maps  for  each  process  step  with  non-uniformly  spaced  grid  lines  to  calculate  work  density  per  cell  and  aggregate  the  cells  into  zones  to  calculate  the  workload  per  step  per  zone.  However,  its  application  highlighted  challenges  with  manual  and  subjective  data  collection  and  analysis  required  to  create  the  work  density  maps,  leading  to  the  development  of  the  DDPF  with  a  novel  data  model  and  data  schema,  leveraging  real-time  data  collection  and  advanced  data-driven  methods.  This  data  model  moves  away  from  the  original  definition  of  work  density  that  is  cell-based  and  is  calculated  using  estimates,  to  a  new  definition  that  is  location-based,  where  a  location  is  a  room  or  zone,  and  is  measured  empirically.  Comparing  it  to  the  original  definition,  this  work  density  can  be  considered  cumulative  work  density  for  the  cells  in  a  room  or  a  zone,  hence  referred  to  as  measured  workload.The  second  case  study  focuses  on  the  DDPF's  application  in  production  control,  utilizing  advanced  data  collection  and  analysis  methods,  including  a  360°  camera-based  tracking,  and  a  production  performance  dashboard  for  supporting  production  control.  Algorithms  for  work  detection,  such  as  the  computer  vision-based  algorithm  used  in  this  research,  are  constantly  improving.  Current  implementations  are  limited  as  they  only  work  with  objects  in  line-of-sight  and  with  a  certain  range  and  accuracy,  limited  by  the  nature  of  the  work  to  be  detected,  the  resolution  of  the  sensor,  and  the  types  of  detection  models  used.  I  used  the  actual  performance  data  to  measure  the  duration  of  steps  by  location,  representing  the  step's  measured  workload.  A  combined  dataset  with  the  workload  for  a  location  along  with  the  contextual  data  describing  what  work  was  done,  by  whom,  where,  and  how,  are  stored  as  historical  work  density.  I  used  this  dataset  to  fit  machine  learning  (ML)  models  that  can  predict  work  density  for  future  planning  efforts.In  this  research,  unsupervised  learning  methods  were  employed  to  understand  the  data  and  enhance  the  supervised  learning-based  prediction  of  work  density.  The  investigation  of  the  model's  prediction  performance  demonstrated  the  DDPF's  potential  utility  in  production  planning,  achieving  an  expected  error  of  3.7  days  compared  to  the  historical  data.  The  model's  performance  was  constrained  due  to  the  limited  amount  of  data  collected  and  higher  variability  in  the  higher  range  of  values  of  measured  workloads.  The  distribution  of  measured  workloads  in  the  dataset  has  a  mean  of  20.44  days  with  a  standard  deviation  of  19.03.  To  use  the  model  on  takt  plans  requiring  smaller  workloads,  the  ML  model  will  have  to  be  exposed  to  empirical  data  from  processes  with  similar  workloads.  Although  on  separate  occasions,  the  ML  models  have  been  trained  and  tested  on  real-world  data  and  work  density  has  been  used  for  planning  with  ViWoLZo,  and  they  are  connected  using  the  DDPF,  the  prediction  model  and  ViWoLZo  have  not  yet  been  integrated  for  use  in  real-world  scenarios  to  plan  future  projects  using  predicted  work  density.The  use  of  work  density  enabled  ViWoLZo  and  the  production  performance  dashboard  to  translate  production  system  dynamics  into  a  data-driven  model.  Interviews  with  field  personnel  confirmed  the  DDPF's  effectiveness  in  implementing  takt-like  production  to  reduce  process  duration  through  increased  concurrency,  enhance  stakeholder  communication  through  transparency  and  visual  management,  and  improve  overall  project  performance  through  reduced  variability  and  increased  predictability  of  the  production  performance.  The  ML  models  and  data  analyses  demonstrate  that  contextual  data  contain  valuable  insights  that  can  streamline  the  implementation  of  location-based  production  planning  and  control  methods.  However,  due  to  the  small  size  of  data  collected  from  a  single  case  study,  the  complex  relationships  within  the  data,  and  many  features  left  to  be  collected  and  tested,  these  results  are  just  the  building  blocks  for  further  research.The  dissertation  concludes  with  recommendations  for  broadening  the  adoption  of  the  DDPF,  emphasizing  the  need  for  advancements  in  data  collection  technologies  and  analysis  methods,  and  the  need  to  standardize  historical  work  density  libraries.  Improved  performance  combined  with  simpler  implementation  can  potentially  increase  the  adoption  of  these  methods  in  the  industry,  and  in  turn,  lead  to  further  advancements.
■590    ▼aSchool  code:  0028.
■650  4▼aComputer  science
■653    ▼aConstruction  project  management
■653    ▼aData-Driven  Production  Framework
■653    ▼aLean  construction
■653    ▼aProduction  planning  and  control
■653    ▼aTakt  production
■653    ▼aWork  Density  Method
■690    ▼a0543
■690    ▼a0796
■690    ▼a0984
■690    ▼a0800
■71020▼aUniversity  of  California,  Berkeley▼bCivil  and  Environmental  Engineering.
■7730  ▼tDissertations  Abstracts  International▼g86-03B.
■790    ▼a0028
■791    ▼aPh.D.
■792    ▼a2024
■793    ▼aEnglish
■85640▼uhttp://www.riss.kr/pdu/ddodLink.do?id=T17163611▼nKERIS▼z이  자료의  원문은  한국교육학술정보원에서  제공합니다.

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