4.5 Article

A Digitalized Design Risk Analysis Tool with Machine-Learning Algorithm for EPC Contractor's Technical Specifications Assessment on Bidding

Journal

ENERGIES
Volume 14, Issue 18, Pages -

Publisher

MDPI
DOI: 10.3390/en14185901

Keywords

decision support; engineering procurement and construction (EPC); technical specifications; technical risk extraction; risk phrase extraction; phrase matcher; machine learning algorism; text and data mining; terms frequency; artificial intelligence

Categories

Funding

  1. Korea Ministry of Trade Industry and Energy (MOTIE)
  2. Korea Evaluation Institute of Industrial Technology (KEIT) [20002806]
  3. Korea Evaluation Institute of Industrial Technology (KEIT) [20002806] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

Ask authors/readers for more resources

Engineering, Procurement, and Construction (EPC) projects involve the entire lifecycle of industrial plants. Most EPC contractors lack systematic decision-making tools during bidding, leading to potential underestimation of technical risks and subsequent cost overruns or delays. The development of digital modules for technical risk extraction and design parameter extraction can significantly reduce project risks through automated analysis and extraction of risk clauses in technical specifications.
Engineering, Procurement, and Construction (EPC) projects span the entire cycle of industrial plants, from bidding to engineering, construction, and start-up operation and maintenance. Most EPC contractors do not have systematic decision-making tools when bidding for the project; therefore, they rely on manual analysis and experience in evaluating the bidding contract documents, including technical specifications. Oftentimes, they miss or underestimate the presence of technical risk clauses or risk severity, potentially create with a low bid price and tight construction schedule, and eventually experience severe cost overrun or/and completion delays. Through this study, two digital modules, Technical Risk Extraction and Design Parameter Extraction, were developed to extract and analyze risks in the project's technical specifications based on machine learning and AI algorithms. In the Technical Risk Extraction module, technical risk keywords in the bidding technical specifications are collected, lexiconized, and then extracted through phrase matcher technology, a machine learning natural language processing technique. The Design Parameter Extraction module compares the collected engineering standards' so-called standard design parameters and the plant owner's technical requirements on the bid so that a contractor's engineers can detect the difference between them and negotiate them. As described above, through the two modules, the risk clauses of the technical specifications of the project are extracted, and the risks are detected and reconsidered in the bidding or execution of the project, thereby minimizing project risk and providing a theoretical foundation and system for contractors. As a result of the pilot test performed to verify the performance and validity of the two modules, the design risk extraction accuracy of the system module has a relative advantage of 50 percent or more, compared to the risk extraction accuracy of manual evaluation by engineers. In addition, the speed of the automatic extraction and analysis of the system modules are 80 times faster than the engineer's manual analysis time, thereby minimizing project loss due to errors or omissions due to design risk analysis during the project bidding period with a set deadline.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.5
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

Article Energy & Fuels

The Efficacy of the Tolling Model's Ability to Improve Project Profitability on International Steel Plants

Dong-Hyun Kim, Eul-Bum Lee, In-Hyeo Jung, Douglas Alleman

ENERGIES (2019)

Article Green & Sustainable Science & Technology

Onshore Oil and Gas Design Schedule Management Process Through Time-Impact Simulations Analyses

Daekyoung Yi, Eul-Bum Lee, Junyong Ahn

SUSTAINABILITY (2019)

Article Construction & Building Technology

Geographic Information System-Based Framework for Estimating and Visualizing Unit Prices of Highway Work Items

Chau Le, Tuyen Le, H. David Jeong, Eul-Bum Lee

JOURNAL OF CONSTRUCTION ENGINEERING AND MANAGEMENT (2019)

Article Energy & Fuels

AI and Text-Mining Applications for Analyzing Contractor's Risk in Invitation to Bid (ITB) and Contracts for Engineering Procurement and Construction (EPC) Projects

Su Jin Choi, So Won Choi, Jong Hyun Kim, Eul-Bum Lee

Summary: This study developed two core modules for a digital EPC contract risk analysis tool to help contractors identify and manage risk provisions. By automatically extracting risk-involved clauses and building a machine learning model, the accuracy rates of risk clause extraction were improved.

ENERGIES (2021)

Article Green & Sustainable Science & Technology

The Engineering Machine-Learning Automation Platform (EMAP): A Big-Data-Driven AI Tool for Contractors' Sustainable Management Solutions for Plant Projects

So-Won Choi, Eul-Bum Lee, Jong-Hyun Kim

Summary: This study developed the Engineering Machine-learning Automation Platform (EMAP) using machine-learning technology, to analyze big data generated in various stages of EPC projects. By predicting contractor risks and supporting decisions based on data from bidding, engineering, construction, and OM stages, the study aimed to enhance risk management and decision-making capabilities.

SUSTAINABILITY (2021)

Article Green & Sustainable Science & Technology

An AI-Based Automatic Risks Detection Solution for Plant Owner's Technical Requirements in Equipment Purchase Order

Chae-Yeon Kim, Jong-Gwan Jeong, So-Won Choi, Eul-Bum Lee

Summary: This study proposed a purchase order recognition and analysis system (PORAS) that utilizes artificial intelligence (AI) to automatically detect and compare risk clauses in purchase orders (POs) between plant owners and suppliers. The system significantly reduces the owner engineer's review time of risk clauses, improving work efficiency in the plant industry.

SUSTAINABILITY (2022)

Article Green & Sustainable Science & Technology

Contractor's Risk Analysis of Engineering Procurement and Construction (EPC) Contracts Using Ontological Semantic Model and Bi-Long Short-Term Memory (LSTM) Technology

So-Won Choi, Eul-Bum Lee

Summary: This study aims to analyze critical risk clauses in ITB documents to enhance the competitiveness of EPC contractors. Two models, rule-based and train-based, were developed and suggested to be used together for ITB analysis.

SUSTAINABILITY (2022)

Article Energy & Fuels

A Prediction Model for Spot LNG Prices Based on Machine Learning Algorithms to Reduce Fluctuation Risks in Purchasing Prices

Sun-Feel Yang, So-Won Choi, Eul-Bum Lee

Summary: This study used machine learning to predict the spot LNG price index (JKM) and reduce price fluctuation risks for LNG importers. The LSTM model performed the best, but its performance decreased during the COVID-19 period. The ML models' performance can be improved through additional studies.

ENERGIES (2023)

Article Green & Sustainable Science & Technology

Knowledge Retrieval Model Based on a Graph Database for Semantic Search in Equipment Purchase Order Specifications for Steel Plants

Ho-Jin Cha, So-Won Choi, Eul-Bum Lee, Duk-Man Lee

Summary: The complexity and age of industrial plants have led to an increased need for equipment maintenance and replacement. To address the challenge of reducing the process and review time of equipment purchase order (PO) documents, a purchase order knowledge retrieval model (POKREM) was developed. POKREM utilizes knowledge graph (KG) technology and a hierarchical structure to create a graph database for accurate and efficient document search. The implementation of POKREM resulted in a significant reduction in PO document review time and improved work efficiency for engineers.

SUSTAINABILITY (2023)

Article Green & Sustainable Science & Technology

Machine Learning-Based Tap Temperature Prediction and Control for Optimized Power Consumption in Stainless Electric Arc Furnaces (EAF) of Steel Plants

So-Won Choi, Bo-Guk Seo, Eul-Bum Lee

Summary: This study aims to improve the efficiency of the electric arc furnace (EAF) process by predicting tap temperature in real time and automatically setting the input power. A tap temperature prediction model (TTPM) was developed using a machine learning algorithm, resulting in reduced temperature deviation and energy consumption. Economic evaluation showed good feasibility, and the reliability of the system was verified through ten months of successful operation.

SUSTAINABILITY (2023)

Article Computer Science, Information Systems

A Question-Answering Model Based on Knowledge Graphs for the General Provisions of Equipment Purchase Orders for Steel Plants Maintenance

Sang-Hyuk Lee, So-Won Choi, Eul-Bum Lee

Summary: Recently, there has been an increase in equipment replacement and maintenance repair and operation (MRO) optimization in Korean industrial plants, particularly steel-making factories, due to aging and deterioration. To address this, plant owners need to review equipment supply contracts (purchase order documents) with suppliers and vendors promptly. However, the efficiency and quality of the review process vary among engineers due to differences in manual skills and experience. This study developed a general provisions question-answering model (GPQAM) that combines knowledge graph (KG) and question-answering (QA) techniques to facilitate the search for semantically connected contract clauses during equipment purchase contract reviews.

ELECTRONICS (2023)

Article Green & Sustainable Science & Technology

Modeling of Predictive Maintenance Systems for Laser-Welders in Continuous Galvanizing Lines Based on Machine Learning with Welder Control Data

Jin-Seong Choi, So-Won Choi, Eul-Bum Lee

Summary: This study aimed to develop a predictive maintenance model for detecting equipment failures in laser welders in a steel plant. The model combined an auto-encoder (AE) and a long short-term memory (LSTM) model to achieve high accuracy. The LW-PMM achieved an accuracy rate of 97.3% and a precision rate of 79.8%.

SUSTAINABILITY (2023)

No Data Available