Identifying anomalous strips David Stuart, Noah Rubinstein University of California, Santa Barbara June 18, 2008 1.

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Presentation transcript:

Identifying anomalous strips David Stuart, Noah Rubinstein University of California, Santa Barbara June 18,

Goals Systematically understand effects revealed by the data, e.g., disconnected or noisy strips, bad runs, unstable modules. We do not want to develop a framework. – The deliverable is understanding, not software. This understanding could be used to cross-check and perhaps improve the standard bad channel id and data validation algorithms. 2

Method Our approach is to measure each effect and remove it, one at a time. – Once a large effect has been removed, smaller effects become visible. – Ideally, the source of the effect would be understood, but even if not, it can at least be tracked vs time for later understanding, or… – The sudden disappearance of a non-understood effect is as worthy of investigation as the appearance of one. This requires a detailed, & repeated, look at raw data. 3

Examples of such effects are: Time (temperature) dependence 4 Plot shows pedestal offset vs event number range for a single channel in each chip of one module. Chip pairs in a single laser track each other indicating that this is a temperature dependent gain variation. This effect is easily removed by a common-mode subtraction, but we still want to understand and monitor it. Run from TOB checkout data in March.

5 Time (temperature) dependence Common mode pickup Non-common mode pickup Examples of such effects are: Raw Noise CMS Noise Linear-CMS Noise Run from TOB checkout data in March.

6 Raw Noise CMS Noise Linear-CMS Noise Time (temperature) dependence Common mode pickup Non-common mode pickup Gain Examples of such effects are: Normalize each laser to =4 Cable mapping errors Run from TOB checkout data in March.

7 Time (temperature) dependence Common mode pickup Non-common mode pickup Gain Pedestal and noise slopes across a chip Examples of such effects are:

8 Effects can be monitored E.g., Pedestal slopes are not a problem, but changes are noteworthy.

9 Effects can be monitored E.g., How does TOB wing noise change with time? Temperature change

10 Effects can be monitored Even worth monitoring odd effects. We observe “W” shapes in the pedestals. Not understood but stable.

11 Automation Since this requires monitoring many different variables for many different channels, It was worth automating the checks. That was done for the TIF data and awaits new data.

12 Bad channel ID The final effect to remove is statistics. Averaging over many runs clarifies bad channel ID Normalize each laser to =4 Run from TOB checkout data in March. All TIF data

13 Bad channel ID Averaging over many runs clarifies bad channel ID, but The variation is also useful to understand. E.g., is this a real step?

14 Plan Would like to apply our algorithm to checkout data. Have studied the TIB & TOB strings tested in March. Data looks good, but lack of FED cabling info prevents mapping. Would like to compare checkout data to TIF data and construction data (where available, e.g., we have only what was built at UCSB). Would like to examine stability of data through CRUZETn. What we learn could help validate or improve a bad channel ID algorithm.