Surrogate Lagrangian Job-Shop Solver
The job-shop scheduling problem is specified by a jsp::JobShopProblem
mutable structure. Currently, persistent
storage and specification of the problem is done using a series of .csv files which are loaded into intermediate
DataFrames
objects then used to populate the jsp
structure. In total eight .csv files are used which are
loaded into dataframes then used:
- part_due: Contains a column
due
. The i-th row of columndue
has the due date of the i-th part. - part_group: Contains columns
part
andgroup
. Defines the Lagrangian subproblem (group) that each part belongs to. - part_operation_num: Contains a column
num
which is the number of operations required to complete the i-th part which corresponds to the i-th row. - part_operation_rework: Currently, unused. Will be used to set rework probabilities specific to each part and operation rather than a single rework probability for all part and operation combinations.
- part_operation_scrap: Currently, unused. Will be used to set scrap probabilities specific to each part and operation rather than a single scrap probability for all part and operation combinations.
- part_operation_time: Contains three columns
part
,op
, andtime
used to specific the time taken to process each part on a given operation. - machine_part_op: Describes the part and operation combinations that may be processes on a given machine.
- machine_capacity: Describes the capacity for each machine where the i-th entry in the
capacity
column corresponds to the capacity of machinei
.
The following parameters must also be set in order to fully define the problem.
- ShiftLength: Typical shift length considered.
- prob: Set in the
parameter
subfield ofjsp
. Probability of scrap. - prob_r: Set in the
parameter
subfield ofjsp
. Probability of rework. - T: UnitRange defining the number of time steps considered.
- Tmax: Maximum time for scheduling problem.
Options set as fields of the parameter
subfield.
- start_upper_bound: Initial estimate of upper bounds.
- start_norm: Starting norm.
- start_step: Starting step size.
- penalty: Starting penalty.
- optimizer: Sets the optimizer used to solve subproblems and the feasibility problem.
- feasible_norm_limit: Below this absolute norm limit, the algorithm will start to try to solve the feasibility problem.
- feasibility_window: The neighbor about the Lagrangian subproblem solution a feasible solution will be searched for.
- feasible_solve_count: Number of feasibility problems to solve in sequence to generate feasible upper bounds.
- iteration_limit: Maximum number of subproblem iterations used.
- penalty_iteration: Number of iterations after which the penalty will be updated.
- penalty_factor: Factor used to update the penalty.
- feasible_solve_time: Solve time allowed each feasible solve iteration performed.
- random_seed: Random seed used for all routines called in the Random module of julia.