Railways

  • Summary
  • Background
  • Category
  • The Challenge: Aging quickly
  • Our Solutions: Fault Pattern Detection
  • Results
  • Energy Consumption Saved Annually: >11%
  • Electricity Cost Saved Annually: >HKD120,000
  • Time to cover the initial costs: 1.5 years

Summary

Carnot Innovations has provided unsupervised Machine Learning based Fault Pattern Detection to detect an anomality of specific chiller.

Background

Category

Public Transport

The Challenge: Aging quickly

The public transport station’s refrigeration plant and relevant equipment in the transport station were aging quickly due to frequent daily usage. A fault prediction and equipment maintenance system was urgently needed in order to ensure an efficient operation for the public transport facility.

Our Solutions: Fault Pattern Detection

Carnot provided unsupervised Machine Learning based Fault Pattern Detection in this project, in which detected an anomaly for one specific chiller. Under the Anomaly Matrix view, our software diagnosed that the chiller water flow rate was much lower than normal. Thus, this issue was proactively addressed and resolved by Carnot.

Through the ability to predict and detect malfunctions at an early stage, Carnot helped our client to contain potential issues from turning into severe system failure. Preventive maintenance was also in place to avoid costly events.

Results

Carnot provided a web-based dashboard for the BMS operators to view and monitor performance diagnostic functions and proposed actions for fault detection, in which our client gained the benefits of learning and getting familiar with our advanced analytics platform.

Now that optimization has been completed:

>11%

Energy Consumption Saved Annually

>HKD120,000

Electricity Cost Saved Annually

1.5 years

Time to cover the initial costs

Besides economic benefits, occupant enjoy higher comfort level with more consistent air conditioning control.

Maintenance schedule is carried out in a routine manner for the reporting of several aspects, including an overall energy profile, achieved energy savings and fault prediction, savings forecast, status of AI model, and the means for further enhancement.

Carnot continues with the ongoing maintenance and commissioning for the public facility, meanwhile in discussions with our partner for new project opportunities. Since the results in this project have been fairly satisfying, we are optimistic that our software can be widely used in other public transportation facilities.