Business Process-Organizational Structure (BP-OS) Performance Measurement Model and Problem-Solving Guidelines for Efficient Organizational Management in an Ontact Work Environment
Abstract
:1. Introduction
2. Related Works
2.1. Factors Affecting Organizational Performance in the Ontact Work Environment and the Need to Consider Them
2.2. Evaluation and Redesign Method of Business Process, Organizational Structure, and Human Resource Allocation
2.3. The need for Organizational Performance Prediction through Enterprise Simulation and the Limitations of Existing Enterprise Simulations
3. Performance Measurement Model in the Ontact Work Environment
3.1. BP-OS Performance Measurement Model in General Work Environment through Total Task Cycle Time
3.2. BP-OS Performance Measurement Model in the Ontact Work Environment
- Delay in pure execution tine (α)
- 2.
- Delay in approval/assignment time (𝛽)
- 3.
- Delay in negligence time (γ)
- 4.
- Factors increasing total task cycle time (δ)
- 5.
- Factors decreasing total task cycle time (θ)
- 6.
- Factors independently affecting total task cycle time in the ontact work environment (ε)
4. BP-OS Simulation Modeling in the Ontact Work Environment
4.1. Enterprise Simulation Architecture in the Ontact Work Environment
4.1.1. Defining Data Used in Enterprise Simulations
Business Process Definition
Organizational Structure Definition
Performer Definition
- -
- Left: Fast, execution time due to excellent concentration, good working environment, etc.
- -
- Mode: Most common execution time. The value of the execution time that can be expected from the performer in the absence of exceptional circumstances.
- -
- Right: Slow execution time due to poor concentration, poor working environment, etc.
Manager Definition: Availability
- -
- Left: Fast approval/assignment time with excellent concentration and smooth communication with performers.
- -
- Mode: Common approval/assignment time expected from managers with no special situations.
- -
- Right: Slow approval/assignment time with reduced concentration and difficult communication with performers.
4.1.2. Prerequisites for Enterprise Simulation
4.2. Enterprise Simulation in the Ontact Work Environment: Case Study
4.3. Enterprise Simulation Results in the Ontact Work Environment
4.4. Analysis of Enterprise Simulation Results in the Ontact Work Environment
5. Problem-solving Guidelines in the Ontact Work Environment
5.1. Streamlining of Organizational Structure and Reporting System
5.2. Streamlining Business Process
5.3. Efficient Human Resource Allocation for Non-Face-to-Face Business Operation
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Execution Time (A + α) | Approval/Assignment Time (B + 𝛽) | Negligence Time (C + γ) | |
---|---|---|---|
No Delay | 2/4/8 | 1/2/4 | Fixed value accordingto Case |
15%/25%/35% delay rate applied | 2.3/4.6/9.2 2.5/5/10 2.7/5.4/10.8 | 1.15/2.3/4.6 1.25/2.5/5 1.35/2.7/5.4 | Fixed value according to Case |
25%/35%/45% delay rate applied | 2.5/5/10 2.7/5.4/10.8 2.9/5.8/11.6 | 1.25/2.5/5 1.35/2.7/5.4 1.45/2.9/5.8 | Fixed value according to Case |
35%/45%/55% delay rate applied | 2.7/5.4/10.8 2.9/5.8/11.6 3.1/6.2/12.4 | 1.35/2.7/5.4 1.45/2.9/5.8 1.55/3.1/6.2 | Fixed value according to Case |
Case I | Case II | Case III | |
---|---|---|---|
No Delay | 145,884 | 164,077 | 173,672 |
15%/25%/35% Delay rate applied | 178,433 (27.9% delay) | 218,148 (32.9% delay) | 217,264 (25.1% delay) |
25%/35%/45% Delay rate applied | 196,077 (38.4% delay) | 236,119 (43.9% delay) | 241,056 (38.8% delay) |
35%/45%/55% Delay rate applied | 210,392 (50.0% delay) | 254,522 (55.0% delay) | 265,544 (52.9% delay) |
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Kim, H.; Choi, I.; Lim, J.; Sung, S. Business Process-Organizational Structure (BP-OS) Performance Measurement Model and Problem-Solving Guidelines for Efficient Organizational Management in an Ontact Work Environment. Sustainability 2022, 14, 14574. https://doi.org/10.3390/su142114574
Kim H, Choi I, Lim J, Sung S. Business Process-Organizational Structure (BP-OS) Performance Measurement Model and Problem-Solving Guidelines for Efficient Organizational Management in an Ontact Work Environment. Sustainability. 2022; 14(21):14574. https://doi.org/10.3390/su142114574
Chicago/Turabian StyleKim, Hokyeom, Injun Choi, Jitaek Lim, and Sanghyun Sung. 2022. "Business Process-Organizational Structure (BP-OS) Performance Measurement Model and Problem-Solving Guidelines for Efficient Organizational Management in an Ontact Work Environment" Sustainability 14, no. 21: 14574. https://doi.org/10.3390/su142114574
APA StyleKim, H., Choi, I., Lim, J., & Sung, S. (2022). Business Process-Organizational Structure (BP-OS) Performance Measurement Model and Problem-Solving Guidelines for Efficient Organizational Management in an Ontact Work Environment. Sustainability, 14(21), 14574. https://doi.org/10.3390/su142114574