KPI ASSESSMENT USING BUSINESS PROCESS ANALYSIS, DETERMINISTIC AND STOCHASTIC MONTE CARLO SIMULATION. CASE: KPI FUEL RATIO (LT/BCM/KM)
The study investigates a Key Performance Indicator (KPI) named Fuel Ratio that measures fuel efficiency in mining operation, expressed in lt/bcm/km unit. Fuel efficiency becomes one of critical success factors in mining operation performance because the cost of fuel takes the largest portion for...
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Format: | Theses |
Language: | Indonesia |
Subjects: | |
Online Access: | https://digilib.itb.ac.id/gdl/view/62509 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The study investigates a Key Performance Indicator (KPI) named Fuel Ratio that measures
fuel efficiency in mining operation, expressed in lt/bcm/km unit. Fuel efficiency becomes
one of critical success factors in mining operation performance because the cost of fuel
takes the largest portion for around 40% to 60% of total mining cost. The mentioned Fuel
Ratio KPI measures input-output rate from three variables: Fuel consumption volume
(liters), material production volume (bcm-bank cubic meter) and hauling distance (km). In
actual, unfortunately, the KPI fails to measure the fuel efficiency. Instead, it has created
confusion among analysts and decision makers in a mining company by its anomaly.
Whenever the fuel efficiency strategy by reducing haul distance and haul truck number unit
is executed, this KPI will show a higher number and interpreted as inefficiency.
This investigation is a part of a KPI Life Cycle which known as KPI Assessment phase to
review if the KPI still has the capability to provide a good measurement. The method of
this research is using combination of both qualitative and quantitative approach. Started
with Business Process Analysis (BPA) approach to modelling current KPI formulation into
a flow chart diagram with cause-effect technique. Then the results from BPA phase are
validated through simulation analysis in both deterministic and stochastic Monte Carlo
methods. To support the validation phase, actual operational data is collected from
database.
The assessment discovered that anomaly of this KPI was occurred because current
formulation incorporating parameters that irrelevant with haul distance variable. Once the
irrelevant parameters were eliminated from the calculation in the simulation
experimentation, the anomaly of the KPI was disappeared. The output of this research
suggests that the KPI requires a new formulation that has different treatment for each fuel
component variable based on their relevancy to haul distance variable. The outcome from
the solution is mining operation with the help from new KPI Fuel Ratio will be more
confident in doing their fuel efficiency strategy and take more profit without fear of the
false alarm. |
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