Formula for Determining the Construction Workers Productivity Including Environmental Factors
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Factors Affecting Labour Productivity
3.2. Parameterization of the Factors
- The membership functions of the following factors are captured as linguistic values: ergonomics of equipment and tools; wage; organization of work and work stations; stress; fatigue of the employee; and health. The membership function is:
- Very good (0.8; 0.9; 1.0; 1.0);
- Good (0.6; 0.7; 0.8; 0.9)
- Average (0.3; 0.4; 0.6; 0.7);
- Weak (0.1; 0.2; 0.3; 0.4)
- Bad (0.0; 0.0; 0.1; 0.2)
- For the factor: noise, the membership function is described in Equation (2).
- For the factor: duration of work shift, the membership function is described in Equation (3).
- For the factor: regeneration of strength, the membership function is described in Equation (4).
- For the factor: precipitation, the membership function is described in Equation (5).
- For the factor: wind, the membership function is described in Equation (6).
- For the factor: air temperature, the membership function is described in Equation (7).
- For the factor ‘worker’s absence,’ the membership function is described in Equation (8).
- For the factor: adaptation to new working conditions, the membership function is described in Equation (9).
- For the factor ‘time spent with family,’ the membership function is described in Equation (10).
- For the factor ‘day of the week,’ the membership function is described in Equation (11).
3.3. Impact of Identified Factors on Work Productivity of Construction Workers
3.4. Formula for Determining the Productivity of Construction Workers by Considering the Influencing Factors
3.5. Example of Formula Usage
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Factor Group | Factors | Study |
---|---|---|
Time spent outside work | worker’s absence | Hsie (2009) [22]; Ahn et al. (2013) [24] |
time spent with the family (WLB) | Townsend (2012) [23] | |
Weather conditions | air temperature | Moselhi and Khan (2012) [5]; Lee et al. (2009) [25]; Zhao et al. (2009) [26] |
wind | ||
precipitation | ||
Psychophysical conditions | stress | Bowen et al. (2013) [29] |
fatigue | Bowen et al. (2013) [29] | |
health | Helmer (1996) [27] | |
age | Helmer (1996) [27] | |
recovery | Chan et al. (2012) [28] | |
Organization and management of the worker | ergonomics noise duration of work shift salary organization of work and workstations | Malara (2014) [30]; Plebankiewicz et al. (2015) [31] |
Remaining factors | day of the week adaptation to new operating conditions or a new technology | Malara (2014) [30] |
Factor Number | Factor Name | Average Value |
---|---|---|
c1 | Ergonomics | 4.01 |
c2 | Noise | 3.65 |
c3 | Duration of work shift | 3.20 |
c4 | Salary | 4.51 |
c5 | Organization of the workstations | 4.17 |
c6 | Stress | 3.38 |
c7 | Fatigue | 4.18 |
c8 | Health | 4.27 |
c9 | Age of the worker | 3.83 |
c10 | Recovery of strength | 3.09 |
c11 | Precipitation | 3.49 |
c12 | Air temperature | 3.49 |
c13 | Wind | 3.49 |
c14 | Time spent with the family | 3.16 |
c15 | Worker’s absence | 3.16 |
c16 | Day of the week | 3.65 |
c17 | Adaptation to new operating conditions | 3.73 |
Group Name—Influence on Work Performance of Construction Workers | Low | Average | High (Important) | Very High (Very Important) |
---|---|---|---|---|
Factors assigned | c3, c10, c14, c15 | c2, c6, c9, c11, c12, c13, c16, c17 | c1, c5, c7, c8 | c4 |
Weight coefficient | 0.25 | 0.5 | 0.75 | 1 |
y | 0 | 0.25 | 0.5 | 0.75 | 1 | 2 | 3 | 4 | 5 |
---|---|---|---|---|---|---|---|---|---|
z1 | 1 | 0.84 | 0.71 | 0.59 | 0.5 | 0.25 | 0.13 | 0.06 | 0.03 |
z2 | 1 | 1.11 | 1.22 | 1.36 | 1.5 | 2.25 | 3.38 | 5.06 | 7.59 |
Factor Symbol | Factor Name | Measurement Result | Function µA(ci) Value |
---|---|---|---|
c1 | Ergonomics | good | 0.75 |
c2 | Noise | approx. 78 dB | 0.2 |
c3 | Duration of work shift | 9 h | 1 |
c4 | Salary | good | 0.8 |
c5 | Organization of the workstations | good | 0.8 |
c6 | Stress | low | 0.8 |
c7 | Fatigue | high | 0.25 |
c8 | Health | average | 0.5 |
c9 | Age of the worker | approx. 42 years | 1 |
c10 | Recovery of strength | 8% | 0.28 |
c11 | Precipitation | N/A | 1 |
c12 | Air temperature | 8 °C | 0.33 |
c13 | Wind | 5 m/s | 0.5 |
c14 | Time spent with the family | 2 days | 1 |
c15 | Worker’s absence | 1 workday | 0.2 |
c16 | Day of the week | Thursday | 0.88 |
c17 | Adaptation to new operating conditions | 2nd day | 0.07 |
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Malara, J.; Plebankiewicz, E.; Juszczyk, M. Formula for Determining the Construction Workers Productivity Including Environmental Factors. Buildings 2019, 9, 240. https://doi.org/10.3390/buildings9120240
Malara J, Plebankiewicz E, Juszczyk M. Formula for Determining the Construction Workers Productivity Including Environmental Factors. Buildings. 2019; 9(12):240. https://doi.org/10.3390/buildings9120240
Chicago/Turabian StyleMalara, Jarosław, Edyta Plebankiewicz, and Michał Juszczyk. 2019. "Formula for Determining the Construction Workers Productivity Including Environmental Factors" Buildings 9, no. 12: 240. https://doi.org/10.3390/buildings9120240
APA StyleMalara, J., Plebankiewicz, E., & Juszczyk, M. (2019). Formula for Determining the Construction Workers Productivity Including Environmental Factors. Buildings, 9(12), 240. https://doi.org/10.3390/buildings9120240