On scheduling using optimizing SMT-solvers.
Licentiate thesis, 2020

Modern production systems are becoming more complex by the year and flexibility of production is one of the key factors to success. Companies want to be able to provide a customized product that fits exactly the customer requirements and, therefore production systems have to be able to produce a wide range of product variants. This introduces additional complexity in the production system,

Among the problems that companies have to deal with is the vehicle routing problem (VRP), which is the problem of scheduling routes for vehicles to serve customers according to predetermined specifications, such as arrival time at a customer, amount of goods to deliver, etc. The problem is industrially relevant since material needs to be delivered from warehouses to the production lines and as the plants grow in size, managing an ever growing fleet of vehicles is becoming a challenge.

Due to the complexity of the requirements and the increasing size of the transportation systems, it is no longer feasible to solve these problems manually, since the variables and constraints to keep into account are simply to many. Modern computers can provide feasible schedules much faster than human beings and for this reason companies are willing to pay a high fee to use the cutting edge scheduling solvers on the market.

Among the class of general purpose solvers, we find mixed integer linear programming (MILP) solvers and satisfiability modulo theory (SMT) solvers. They are not designed to solve one specific problem, but entire classes of problems. In particular, both MILP and SMT solvers can handle mixed integer linear models and, since the VRP can be described by a mixed integer linear model, both MILP and SMT qualify as suitable tools to deal with it.

MILP

Vehicle Routing

Bin Sorting

SMT

Job Shop

Opponent: Federico Pecora

Author

Sabino Francesco Roselli

Chalmers, Electrical Engineering, Systems and control

SMT solvers for flexible job-shop scheduling problems: A computational analysis

IEEE International Conference on Automation Science and Engineering,; Vol. 2019-August(2019)p. 673-678

Paper in proceeding

SMT Solvers for Job-Shop Scheduling Problems: Models Comparison and Performance Evaluation

IEEE International Conference on Automation Science and Engineering,; Vol. 2018-August(2018)p. 547-552

Paper in proceeding

Compact Representation of Time-Index Job Shop Problems Using a Bit-Vector Formulation

IEEE International Conference on Automation Science and Engineering,; Vol. 2020-August(2020)p. 1590-1595

Paper in proceeding

On the Use of Equivalence Classes for Optimal and Suboptimal Bin Packing and Bin Covering

IEEE Transactions on Automation Science and Engineering,; Vol. 18(2021)p. 369-381

Journal article

Engineering Tool Chain for Efficient and Iterative Development of Smart Factories (ENTOC)

VINNOVA (2016-02716), 2016-09-01 -- 2019-08-31.

Subject Categories

Robotics

Other Electrical Engineering, Electronic Engineering, Information Engineering

Publisher

Chalmers

Opponent: Federico Pecora

More information

Latest update

10/20/2020