Proactive Operations Management: Staff Allocation with Competence Maintenance Constraints
Abstract
:1. Introduction
- A break in the use of a specific skill or knowledge,
- Aging competencies,
- Biological ageing, diseases, and accidents.
- Proposing of generic model for proactive allocation of a multi-skilled workforce whilst taking into account the forgetting effect,
- Defining sufficient conditions for cyclical relocations of employees to maintain their competence at a constant level,
- Developing a method for selecting the competences of team members aimed at a trade-off between the assumed robustness to absenteeism and maintenance of the competencies of team members through cyclical rotation of positions.
2. Literature Review
2.1. Work Allocation and Staff Scheduling
2.2. Competence Maintenance
2.3. Research Gaps
- There are no comprehensive models which would enable the study to balance the available human resources (in particular, multi-skilled staff members) with the requirements resulting from particular orders,
- There is a lack of methods for the proactive management of human resources, in particular proactive planning of assignment and rotation of employee tasks, i.e., enabling the formation of employee teams (through synthesis of the suitable competence structure) guaranteeing the timely execution of orders in situations related to ad hoc occurring disruptions,
- There is a lack of analytical models for maintaining multi-skilled human resources that would allow for the development of job (task) rotation methods ensuring the maintenance of staff competencies at a constant level.
3. Maintaining Staff Competencies
3.1. Competence Structure Assessment Indicators
- each course can be assigned to only one teacher in ,
- each teacher provide at least one course in .
3.1.1. Robustness to Disruption (Absenteeism)
- absenteeism in and requires replacement for the course ,
- absenteeism in and requires replacement for the course ,
- absenteeism in and requires replacement for the courses and .
- in absenteeism scenario, the course may be carried out by ,
- in absenteeism scenario, the course may be carried out by the ,
- in absenteeism scenario, the course may be carried out by the , and the course may be carried out by the .
3.1.2. The Forgetting Effect
- will lose competences in and in the period,
- will lose competence in in the period.
- Characteristics of employees, performed activities (courses), assumed disruptions, etc.,
- Decision variables including competence robustness and a measure of its robustness to selected disruptions,
- A set of constraints (relationships connecting decision variables) characterizing the requirements in the field of competence structure and courses assignment.
- Shapes of forgetting curves which specify the employees,
- Restrictions taking into account arbitrarily adopted competencies levels, the exceeding of which leads to a change in the competence of team members.
3.2. Problem Formulation
- —lack of robustness, i.e., for each case of absenteeism there does not exist an assignment that guarantees the execution of curriculum ;
- —full robustness, i.e., for each case of absenteeism there exists an assignment that guarantees the execution of curriculum .
- Can a given curriculum be completed without losing competencies in the structure?
- Does an assignment exist that guarantees a given value of robustness (e.g.,)?
- What is the maximum robustness of the competence structure ?
- Which minimum competence structure (i.e., containing the minimum number of ones) guarantees maintaining a constant level of the team’s competencies and robustness ?
- Which competence structure will give the maximum team robustness to teachers’ absenteeism?
4. Proactive Modelling Approach
4.1. Reference Model
- :
- a set of courses required to complete in curriculum : ,
- :
- a set of teachers, ,
- :
- number of courses executed in curriculum ,
- :
- number of teachers ,
- :
- rotation cycle,
- :
- pair specifies the limits of the courses assigned to the teacher ,
- :
- minimum number of courses assigned to the teacher in one period ,
- :
- maximum number of courses assigned to the teacher in one period ,
- :
- competence of the teacher to perform course : ,
- :
- lifetime,
- :
- maximum competence lifetime: .
- assignment of courses of curriculum to the teachers during the period , , where ,
- assignment of courses of curriculum to the teachers during the period in the case when a given teacher is absent, , where ,
- :
- robustness matrix, , where when the competence structure is not robust to the absence of a given , during the period , in the other cases .
- The teacher cannot perform a course for which they are not competent:
- In each period all courses must be completed:
- In period numbers of courses assigned to are limited by :
- 4.
- The assignment for the curriculum execution should be cyclic (with cycle ):
- 5.
- Competencies should be refreshed in the competence lifetime :
- 6.
- Courses are not assigned to absent teacher :
- 7.
- When teacher is absent, other teachers provide the assigned courses:
- 8.
- In the case when teacher is absent in each period , all courses should be executed:
- 9.
- In the case when teacher is absent, the assignment for the curriculum execution should be cyclic (with cycle ):
- 10.
- If the replacement requires additional competencies (for other teachers), then the competence structure is not robust to the absence of this teacher ():
- 11.
- If the replacement requires exceeding the limits of courses assigned to , then the competence structure is not robust to the absence of this teacher ():
- 12.
- The number of disruption scenarios to confirm the competence structure is robust is calculated as a sum of values of :
- , a set of decision variables representing assignment: and ;
- is a finite set of domains of decision variables: ,
- is a set of constraints specified in inequalities (6)–(18).
- is a constraint specifying the objective function (19).
4.2. Sufficient Conditions
5. Case Study
- Defining the requirements: The FECS curriculum in the 2021–2022 academic year included = 129 courses: (for BSc and MSc courses), with a total of 3800 h. The components of the courses are shown in Table 3.
- Assessment of capabilities: In the 2021–2022 academic year, 32 teachers were employed at FECS. For each of them, their competencies (education, scientific achievements, knowledge of a given course, etc.) were known, which defined the courses that they could conduct. Table 4 presents the components of the competence structure . The value of 1 means that the teacher had the competence to teach a specific course, the value of 0 represents the opposite.
- Teachers’ assignment: During this stage, teachers were assigned to the courses under the following given requirements:
- each course could be executed by only one competent teacher,
- all courses were executed in the same time period (academic year) ,
- each teacher had to perform a minimum of one course (), and a maximum of ten () courses in the period .
- Is there an assignment that guarantees robustness to any single teacher absence without a loss of competencies?
- What is the maximum robustness to any single teacher absence without losing competencies?
- a teacher who executes a course during the may be replaced by ,
- a teacher who executes a course during the may be replaced by ,
- a teacher who executes a course during the may be replaced by ,
- etc.
- There was an assignment that guaranteed robustness .
- Maximum robustness to single teacher absenteeism was .
6. Computational Experiments
- A given structure’s compactness determines the degree of competence saturation of a team:
- There was no teacher in the competence structure without a single competence and no course without a competent teacher.
6.1. Experiment 1
- The set of courses in the curriculum : , ,, …, ,,
- Compactness = 40%.
- What is the maximum robustness of competence structure without loss of competencies?
- What time is needed for calculations?
- What is the minimum rotation cycle ?
6.2. Experiment 2
- The computation time increased, for example, for eight courses and 16 teachers, the difference in the calculation time between = 40% and = 60% was about 8 s,
- The rotation cycle increased only for some cases, for example, for eight courses and 16 teachers, for = 40%, for = 50%, for = 60%.
7. Conclusions
- (1)
- The reference model including the forgetting effect resulting in the loss of previously acquired competencies allows the formulation of the problem of maintaining human resources (MHR) in a manner similar to the problem of maintaining the movement of machines in production processes. The solution to the problem of MHR perceived in this way is a plan of periodic rotation of the workstations and activities that allows employee competencies to be maintained at the required level of robustness. It is easy to see that the proposed extension of the reference model forces a significant increase in the calculation expenditure incurred in the process of planning the staff allocation to tasks or courses.
- (2)
- The implementation of the proposed approach implies the emergence of a new class of trade-off problems, in which the desired rotation of staff is conditioned on the one hand by the time of task execution, and on the other hand by the validity of competencies. Human resource management systems take into account artificial intelligence trends such as data mining and machine learning, cloud-based solutions, agent-based skills and knowledge management systems. So far, however, there is no information about solutions that take into account the needs related to maintaining the competencies of multi-skilled teams in situations related to the forgetting effect.
- (3)
- The experiments and case study have shown that the proposed approach can be used online in practice, i.e., with the curriculum of 120 courses and teams of 30 teachers. Therefore, this paper has managerial implications. The results of this study can be used in decision support systems to maintain employees’ competencies through appropriate job rotation and therefore more sustainable human resource planning (development of long-term competencies, employee empowerment, reduced fatigue, and boredom, etc.).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
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0 | 1 | 0 | 0 | 0 | 0 | 0 | 0 |
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Number of Teachers | Number of Courses | Robustness | Minimum Rotation Cycle | Calculation Time [s] |
---|---|---|---|---|
7 | 10 | 1 | 5 | 2.2 |
7 | 12 | 1 | 4 | 2.15 |
7 | 14 | 1 | 4 | 2.29 |
7 | 16 | 1 | 4 | 2.48 |
7 | 18 | 1 | 4 | 2.52 |
7 | 20 | 1 | 4 | 2.81 |
7 | 22 | 1 | 4 | 2.77 |
7 | 24 | 1 | 4 | 2.91 |
7 | 26 | 1 | 4 | 3.15 |
7 | 28 | 1 | 4 | 3.36 |
7 | 30 | 1 | 4 | 3.37 |
9 | 10 | 1 | 6 | 2.93 |
9 | 12 | 1 | 6 | 3.08 |
9 | 14 | 1 | 6 | 3.28 |
9 | 16 | 1 | 5 | 3.5 |
9 | 18 | 1 | 5 | 3.69 |
9 | 20 | 1 | 5 | 3.96 |
9 | 22 | 1 | 5 | 4.28 |
9 | 24 | 1 | 5 | 4.64 |
9 | 26 | 1 | 5 | 4.88 |
9 | 28 | 1 | 5 | 4.91 |
9 | 30 | 1 | 5 | 5.25 |
10 | 10 | 1 | 6 | 3.81 |
10 | 12 | 1 | 5 | 3.94 |
10 | 14 | 1 | 6 | 4.12 |
10 | 16 | 1 | 5 | 4.04 |
10 | 18 | 1 | 5 | 4.34 |
10 | 20 | 1 | 5 | 5.01 |
10 | 22 | 1 | 5 | 5.05 |
10 | 24 | 1 | 5 | 5.41 |
10 | 26 | 1 | 5 | 5.69 |
10 | 28 | 1 | 5 | 6.13 |
10 | 30 | 1 | 5 | 6.7 |
Number of Teachers | Number of Courses | Compactness | Minimum Rotation Cycle | Calculation Time [s] |
---|---|---|---|---|
5 | 10 | 40% | 3 | 3.26 |
50% | 3 | 3.29 | ||
60% | 4 | 4.99 | ||
6 | 12 | 40% | 3 | 3.98 |
50% | 4 | 5.83 | ||
60% | 5 | 7.74 | ||
7 | 14 | 40% | 3 | 4.87 |
50% | 5 | 9.54 | ||
60% | 5 | 9.86 | ||
8 | 16 | 40% | 4 | 9.32 |
50% | 5 | 12.03 | ||
60% | 6 | 17.61 | ||
9 | 18 | 40% | 5 | 14.69 |
50% | 6 | 19.61 | ||
60% | 6 | 20.82 | ||
10 | 20 | 40% | 5 | 19.31 |
50% | 6 | 26.72 | ||
60% | 6 | 28.16 |
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Szwarc, E.; Bocewicz, G.; Golińska-Dawson, P.; Banaszak, Z. Proactive Operations Management: Staff Allocation with Competence Maintenance Constraints. Sustainability 2023, 15, 1949. https://doi.org/10.3390/su15031949
Szwarc E, Bocewicz G, Golińska-Dawson P, Banaszak Z. Proactive Operations Management: Staff Allocation with Competence Maintenance Constraints. Sustainability. 2023; 15(3):1949. https://doi.org/10.3390/su15031949
Chicago/Turabian StyleSzwarc, Eryk, Grzegorz Bocewicz, Paulina Golińska-Dawson, and Zbigniew Banaszak. 2023. "Proactive Operations Management: Staff Allocation with Competence Maintenance Constraints" Sustainability 15, no. 3: 1949. https://doi.org/10.3390/su15031949
APA StyleSzwarc, E., Bocewicz, G., Golińska-Dawson, P., & Banaszak, Z. (2023). Proactive Operations Management: Staff Allocation with Competence Maintenance Constraints. Sustainability, 15(3), 1949. https://doi.org/10.3390/su15031949