Presentation is loading. Please wait.

Presentation is loading. Please wait.

Risk Based Predictive Maintenance Solutions for Cleaning Sewer Mains

Similar presentations


Presentation on theme: "Risk Based Predictive Maintenance Solutions for Cleaning Sewer Mains"— Presentation transcript:

1 Risk Based Predictive Maintenance Solutions for Cleaning Sewer Mains

2 01 05 02 06 03 07 04 Background and Goals Visualization and Grouping
Cleaning Philosophies Cleaning Optimization Tools 03 07 Cleaning Frequency Optimization Results 04 Code-based Data Collection

3 01 Background and Goals

4 CCU System Background Winston Salem Forsyth County – City/County Utilities Commission 1,750 miles of sewer 50 lift stations 2 WWTPs

5 Winston Salem Program Goals
Reduce SSOs Reportable and Non-Reportable Use Limited Resource Efficiently Develop a Risk Based Schedule Clean the right pipe at the right time Clean the Entire System Move from reactive to proactive Leverage Data Collected

6 Historical SSOs Total SSOs SSOs by Cause State Reportable
Non-Reportable SSOs by Cause High Percentage of O&M caused SSOs

7 Data Review Pull Available Data to Develop a Risk Based Schedule SSOs
Cleaning History Service Requests CCTV Annual Cleaning “Heat” Maps Contractor Work Cleaning Root Control

8 Cleaning Philosophies
02 Cleaning Philosophies

9 Cleaning Performance Indicators
Production Footage cleaned Set-ups performed Effective SSO reduction Cleaning QC (pass rate) Efficient Cleaning at the right time Crew A Crew B Crew C

10 Route-based Cleaning

11 Asset-based Cleaning

12 Route vs Asset Based Route Cleaning Asset Cleaning Pro’s Con’s
Productivity Based Cleaning pipe based on need Clean more footage Better use of limited resources Less windshield time Not “over-cleaning” Limited data needs Con’s “Over-cleaning” Potentially less productive Damaging Pipes More windshield time Not an effective use of resources DATA NEEDS

13 Cleaning Schedule Optimization
Strategic Goal: Reduce SSOs Primary Cause: Maintenance Related Tactic: Use data to maintain assets at “right time”: Benefits: Focus limited resources where they are needed most Reduce LOE to make decisions Utilize data that already exists or is being collected Extend useful lifetimes of pipeline assets

14 Schedule Optimization
Each pipe has an optimum cleaning frequency Too Little Just Right Too Much Efficient use of resources Limit risk of overflow Extend useful life SAVE MONEY Risk of overflow Inefficient Resource Use Increase wear

15 Keys to SSO Reduction VIA Sewer Cleaning
Office Frequency optimization process Optimized Work Order creation and assignment process Field Quality Equipment SOPs – techniques and data collection Training – techniques and data collection QA/QC Program – techniques and data collection Both Balance between quantity and quality of cleaning

16 Asset Based Cleaning Tools Needed
Measure the maintenance condition of a pipe Determine asset cleaning frequency Group assets onto work orders in geographic clusters

17 Code-based Data Collection
03 Code-based Data Collection

18 Code-Based Cleaning Data
Findings Severity Grease Clear Roots Light Debris Medium Heavy

19 One-to-One Work Orders
Before After Steve – First thing we had to change was the way work orders were generated/completed. Need to collect code based findings on every asset rather than entire work order. Data isn’t very accurate if the same findings are used for a group of pipes. One may have Heavy Grease and the other 5 pipes on the work order may be clear. Existing system would assume all 6 pipes have Heavy Grease.

20 Cleaning Frequency Optimization
04 Cleaning Frequency Optimization

21 Cleaning Optimization Premise
Based on two concepts: Data driven decisions Pipes have cleaning “windows” Data System Recommendation User Decision

22 CLEAR LIGHT MEDIUM HEAVY DECREASE FREQUENCY FREQUENCY IS RIGHT
Data Driven Decisions CLEAR DECREASE FREQUENCY Any bullets here? LIGHT FREQUENCY IS RIGHT MEDIUM INCREASE FREQUENCY HEAVY INCREASE FREQUENCY

23 Cleaning Schedule Windows
Target Complete Last Completed Date Next Date Target Start Date Date 1 Month 6 Month 12 Month 60 Month Time Time

24 Visualization and Grouping Tool
05 Visualization and Grouping Tool

25 Visualize Pipes to Schedule
Benefit: Allow the User to quickly and effectively balance risk and geographic location when assigning work Facilitates balance between WO risk and location

26 Cleaning Optimization Tools (COTools)
06 Cleaning Optimization Tools (COTools)

27 Cleaning Optimization Tools Setup
Target Complete

28 COTools User Interface

29 Steve – Now it is all in the new Cityworks system
Steve – Now it is all in the new Cityworks system. Can create a single work order with many pipes and get findings for each pipe. The planner scheduler uses this GIS view to select groups of pipes that need to be cleaned. Planner scheduler looks for red pipes first and any other colors surrounding it to increase efficiency and limit windshield time.

30 07 Results

31 SSOs

32 HDRs Practical Approach has Led to Successful Programs

33 Questions? kimd@cityofws.org O: 336.771.5106 M: 336.462.1765
O: M:


Download ppt "Risk Based Predictive Maintenance Solutions for Cleaning Sewer Mains"

Similar presentations


Ads by Google