AIOLOS: Artificial Intelligence powered framework for OnLine prOduction Scheduling

Lead Research Organisation: University of Manchester
Department Name: Chem Eng and Analytical Science

Abstract

The chemical industry in the UK plays a vital role in the nation's economy with a total annual turnover of £50 billion. To remain competitive both regionally and globally, optimisation-based scheduling methods are often applied to achieve a significant increase in process profit, reduction in energy cost, improvement in the efficiency of inventory management, and enhanced customer satisfaction. However, frequent disruptions such as demand fluctuation, rush order arrivals, due date changes, and equipment malfunction are unavoidable in chemical manufacturing. When these disruptions are present, a pre-determined optimal schedule can become suboptimal or even infeasible. With the use of heuristic-based reactive scheduling methods in response to frequent disruptions, the UK chemical industry loses an estimated profit in the order of hundreds of millions of pounds every year. The existing optimisation-based scheduling methods either require high computational expense to generate a schedule, thus rendering them incapable of managing unexpected disruptions in online scheduling; or directly use poor heuristics or knowledge for fast decision-making which usually leads to a conservative schedule resulting in significant financial losses. More importantly, these methods cannot effectively accommodate certain disruptions such as equipment malfunction and rush order arrivals that often occur in online scheduling, restricting their potential application.
This research will deliver a next generation autonomous online scheduling framework in response to different types of disruptions in the chemical manufacturing industry. The framework will generate high-quality dispatching rules to provide optimal or near-optimal online scheduling solutions for emerging uncertainties in a timely manner (e.g., < 5 minutes) through integration of novel machine learning techniques and robust mathematical programming approaches. This will also allow for the identification of a solution to minimise energy consumption. The research will be addressed via a seamless collaboration between The University of Manchester and University College London with expertise in process systems engineering and machine learning. The proposed framework will be tested in close interactions with industrial partners in the UK and China. The improvement in profit is expected to be at least 3% and potentially up to 15%, corresponding to an estimated annual increase in profit between £70 million and £320 million for the UK chemical industry.

Publications

10 25 50
 
Title An open-source simulation model for solving scheduling problems 
Description This open source code is developed based on the GEP-based machine learning algorithm. It can be used to generate different dispatching rules, which can be used to solve industrial scheduling problems. 
Type Of Material Computer model/algorithm 
Year Produced 2022 
Provided To Others? Yes  
Impact The developed simulation code can be used by chemical industries to improve their chemical production scheduling. It can also be used by researchers to solve their scheduling problems. 
URL https://github.com/aydinteymurifar/Scheduling-Source-Codes
 
Title Data-Driven Dispatching Rules Mining and Real-Time Decision-Making Methodology 
Description A novel closed-loop scheduling framework is proposed to achieve real-time decision making by calling the appropriate data-driven dispatching rules at each rescheduling point. This framework contains four parts: offline training, online decision-making, data base and rules base. In the offline training part, the potential and appropriate dispatching rules with managers' expectations are explored successfully by an improved gene expression program (IGEP) from the historical production data, not just the available or predictable information of the shop floor. In the online decision-making part, the intelligent shop floor will implement the scheduling scheme which is scheduled by the appropriate dispatching rules from rules base and store the production data into the data base. 
Type Of Material Computer model/algorithm 
Year Produced 2022 
Provided To Others? Yes  
Impact This framework has been extended in my research group for chemical production scheduling. It has also been used in the collaboration with Dr Haijun Zhang from Zhengzhou University of Aeronautics. 
 
Description Distributed Digital Twin Shop-floor Scheduling 
Organisation Zhengzhou University of Aeronautics
Country China 
Sector Academic/University 
PI Contribution My expertise in machine-learning based scheduling optimisation methods, supervision, and training of the staff
Collaborator Contribution The main contributions made by the partners include their expertise in digit twin technology and intelligent algorithms, and industrial data for job-floor scheduling,
Impact This collaboration is multi-disciplinary. it involves Mechanical Engineering, Electronic Engineering, Operations Research and Chemical Engineering. Currently, a new framework for distributed digit-twin job-floor scheduling has been proposed. Corresponding resource optimisation mechanism has been designed for the next development of intelligent optimisation algorithms.
Start Year 2022