AMS Data Transparency Reporting Don Tucker AMS Data Workshop III September 19, 2014.

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Presentation transcript:

AMS Data Transparency Reporting Don Tucker AMS Data Workshop III September 19, 2014

AMS Data Workshop III 5/17/ Contents –Process and Assumptions –Transaction Type Logic, Disconnect Type Logic –Bins –Reports……. AMS Data Transparency Reporting

AMS Data Workshop III 5/17/ Process & Assumptions –Data with 867 reads ending in July 2014 selected. –Data selected from database for analysis on August 13, –Selected all AMS reads with start times within 60 days of the first of the reporting month to the last day of the reporting month. –Both estimated and actual 867 and AMS reads were selected. –Select 867 records that have AMS reads. If a record has an 867 but no AMS reads then the record is dropped. –Sum up AMS totals for the period of the coinciding 867 read. –Calculate the delta between 867 and AMS kWh. (Delta kWh) = [(867 kWh) – round(AMS kWh)] / (867 kWh) If both the 867 kWh and AMS kWh are zero then Delta kWh = 0. If 867 kWh is zero and AMS kWh is non-zero then the comparison cannot be performed and the record is removed from further reporting analysis. (.1% of reads for the July run) AMS Data Transparency Reporting Count of Reads% of Starting Reads% Reported DataData Description 7,107, %Starting Reads -5,5420.1%Removed due to zero kWh 867 and non-zero AMS total 7,102, %100.00%All analyzed reads -6,977, % Removed due to AMS read being within (inclusive) 2kWh or 2% of ,3251.7%1.8%Analyzed reads (subset with deltas greater than 2kWh and 2%)

AMS Data Workshop III 5/17/ Transaction Type Logic –Separated reads into the following categories based on service order transactions. Move In/ Out category contains 867 reads that coincide with Move In, Move Out or Move Out to CSA service orders. Switch category contains 867 reads that coincide with Switch or Drop to POLR service orders. Cycle Read category contains 867 reads that do not coincide with any of the above mentioned service orders. If one of the above mentioned service orders was present with an effective date between the start date of the 867 minus one day and the stop date of the 867 plus one day then that service order was used to classify that read per the definitions above. If a service order from both the Move In/Out category and the Switch category are present for a meter read the read is classified as Move In/Out. Disconnect Type Breakout –Data broken into three groups based on disconnect type. AMSR – Remote disconnect type, thought to have a meter multiplier of 1. AMSM – Manual disconnect type, may not have a meter multiplier of 1. Unknown – Remote designation type not designated. AMS Data Transparency Reporting

AMS Data Workshop III 5/17/ Bins AMS Data Transparency Reporting % BinDelta % as x <(50%)x < -50% (20)-(50%)-50% =< x < -20% (10)-(20%)-20% <= x < -10% (5)-(10%)-10% <= x <-5% (3)-(5%)-5% <= x < -3% (2)-(3%)-3% <= x < -2% 0-(2%)-2% <= x < 0% 0%x = 0% 0-2%0% < x <= 2% 2-3%2% < x <= 3% 3-5%3% < x <= 5% 5-10%5% < x <= 10% 10-20%10% < x <= 20% 20-50%20% < x <= 50% >50%50% < x kWh BinDelta kWh as x <(50)x < -50 (20)-(50)-50 <= x < -20 (10)-(20)-20 <= x < -10 (5)-(10)-10 <= x <-5 (3)-(5)-5 <= x < -3 (2)-(3)-3 <= x < -2 0-(2)-2 <= x < 0 0x = < x <= < x <= < x <= < x <= < x <= < x <= 50 >5050 < x

6 Deltas for all analyzed AMSR reads grouped by transaction type

7

8

9 Number of 867 Reads6,575,089 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %1%

10 Number of 867 Reads6,575,089 Min delta kWh (867 < AMS)-96,454 Max delta kWh (867 > AMS)18,840 Avg abs delta kWh3

11 Number of 867 Reads5,946,549 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %1%

12 Number of 867 Reads5,946,549 Min delta kWh (867 < AMS)-96,454 Max delta kWh (867 > AMS)11,183 Avg abs delta kWh3

13 Number of 867 Reads466,771 Min delta % (867 < AMS)-31300% Max delta % (867 > AMS)100% Avg abs delta %2%

14 Number of 867 Reads466,771 Min delta kWh (867 < AMS)-50,519 Max delta kWh (867 > AMS)18,840 Avg abs delta kWh3

15 Number of 867 Reads161,769 Min delta % (867 < AMS)-9294% Max delta % (867 > AMS)100% Avg abs delta %1%

16 Number of 867 Reads161,769 Min delta kWh (867 < AMS)-18,030 Max delta kWh (867 > AMS)3,683 Avg abs delta kWh4

17 Deltas for all analyzed AMSM reads grouped by transaction type

18

19

20 Number of 867 Reads514,799 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %4%

21 Number of 867 Reads514,799 Min delta kWh (867 < AMS)-934,307 Max delta kWh (867 > AMS)265,681 Avg abs delta kWh43

22 Number of 867 Reads487,868 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %4%

23 Number of 867 Reads487,868 Min delta kWh (867 < AMS)-934,307 Max delta kWh (867 > AMS)265,681 Avg abs delta kWh42

24 Number of 867 Reads9,785 Min delta % (867 < AMS)-5900% Max delta % (867 > AMS)100% Avg abs delta %6%

25 Number of 867 Reads9,785 Min delta kWh (867 < AMS)-72,563 Max delta kWh (867 > AMS)17,601 Avg abs delta kWh90

26 Number of 867 Reads17,146 Min delta % (867 < AMS)-923% Max delta % (867 > AMS)100% Avg abs delta %2%

27 Number of 867 Reads17,146 Min delta kWh (867 < AMS)-31,112 Max delta kWh (867 > AMS)109,600 Avg abs delta kWh60

28 Deltas for all analyzed unknown disconnect type reads grouped by transaction type

29

30

31 Deltas for AMSR reads with delta > 2% and > 2 kWh grouped by transaction type

32

33

34 Number of 867 Reads99,702 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %30%

35 Number of 867 Reads99,702 Min delta kWh (867 < AMS)-96,454 Max delta kWh (867 > AMS)18,840 Avg abs delta kWh159

36 Number of 867 Reads62,066 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %37%

37 Number of 867 Reads62,066 Min delta kWh (867 < AMS)-96,454 Max delta kWh (867 > AMS)11,183 Avg abs delta kWh228

38 Number of 867 Reads29,311 Min delta % (867 < AMS)-31300% Max delta % (867 > AMS)100% Avg abs delta %18%

39 Number of 867 Reads29,311 Min delta kWh (867 < AMS)-50,519 Max delta kWh (867 > AMS)18,840 Avg abs delta kWh40

Number of 867 Reads8,325 Min delta % (867 < AMS)-9294% Max delta % (867 > AMS)100% Avg abs delta %14%

41 Number of 867 Reads8,325 Min delta kWh (867 < AMS)-18,030 Max delta kWh (867 > AMS)3,683 Avg abs delta kWh61

42 Deltas for AMSM reads with delta > 2% and > 2 kWh grouped by transaction type

43

44

45 Number of 867 Reads23,535 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %71%

46 Number of 867 Reads23,535 Min delta kWh (867 < AMS)-934,307 Max delta kWh (867 > AMS)265,681 Avg abs delta kWh641

47 Number of 867 Reads19,281 Min delta % (867 < AMS) % Max delta % (867 > AMS)100% Avg abs delta %82%

48 Number of 867 Reads19,281 Min delta kWh (867 < AMS)-934,307 Max delta kWh (867 > AMS)265,681 Avg abs delta kWh706

49 Number of 867 Reads2,798 Min delta % (867 < AMS)-5900% Max delta % (867 > AMS)100% Avg abs delta %20%

50 Number of 867 Reads2,798 Min delta kWh (867 < AMS)-72,563 Max delta kWh (867 > AMS)17,601 Avg abs delta kWh280

51 Number of 867 Reads1,456 Min delta % (867 < AMS)-923% Max delta % (867 > AMS)100% Avg abs delta %16%

52 Number of 867 Reads1,456 Min delta kWh (867 < AMS)-31,112 Max delta kWh (867 > AMS)109,600 Avg abs delta kWh470

53 Deltas for unknown disconnect type reads With delta > 2% and > 2kWh grouped by transaction type

54

55

56 kWh deltas for reads removed from analysis grouped by transaction type

57

58