DailySplit_KSK [daily task 00:02] T:\Cr5000_outdata\slowHourly\KSK_RFYYDOY.dat DailySplit_KSS [daily task 00:03] T:\Cr5000_outdata\slowHourly\KSS_RFYYDOY.dat.

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DailySplit_KSK [daily task 00:02] T:\Cr5000_outdata\slowHourly\KSK_RFYYDOY.dat DailySplit_KSS [daily task 00:03] T:\Cr5000_outdata\slowHourly\KSS_RFYYDOY.dat OTAGO I:\YYYY\London\$site and NetCDF to dataBridge01: A:\data\YYYY\London\$level\$site\DAY\$DOY GAS-LAS-WXT-Ceil [hh:11] grab hourly WXT data from both roofs to \WXT510\RAW\MM\WXTYYYYDOY_HH_raw.txt translate hourly WXT data formatted raw data \WXT510\FORMAT_L0\WXTYYYYDOY_HH.txt \WXT510\FORMAT_L1\WXTYYYYDOY_HH.txt write hourly WXT 5s data to databridge01 grab Rad & RG data to \CR5000\KSK_RFYYDOY.dat \CR5000\KSS_RFYYDOY.dat LoggerNet KSK Mast 10_09_10.CR5 Q:\CR5000\Fast\CR5000_Slow.dat ROOF8 COMCAP4 Q:\WXT510\wxt-YYYYMMDD-HH00.txt CR3000 Data Logger KSK-Mast Instruments Instruments wires CNR4 K up, K dn, L up, L dn, T CNR1 WXT510 T, U, p, RH, RR ARG100 [RR] LoggerNet KSS tower 01_09_10.CR5 C:\CR5000\CR5000_slow.dat ROOF13 (C is T on Otago) C:\WXT510\ bin\WXT510.pyc stores data to data\WXT-YYYYMMDD-HH00.txt CR5000 Data Logger KSS-Mast InstrumentsInstruments wires CNR1 K up, K dn, L up, L dn, T CNR1 WXT510 T, U, p, RH, RR SKU420/5 [ UVA] SKU430 [UVB] SKL2620/5 [PAR] Troubleshoot LoggerNet KSS Tower 19_11_09.CR5 S:\CR5000\CR5000_slow.dat ROOF12 CR5000 Data Logger KSS45W InstrumentsInstruments wires PIR [Ldown] ARG [ RR ] SKU420/5 [ UVA] SKU430 [ UVB] SKL2620/5 [ PAR] PSP [Kdown] LHRdat [half hourly task, hh:28, hh:58] Grab LHR data and save to daily file I:\YYYY\London\ALL\LHR_EGLL\EGLLYYYYDOY.tx t DATA COLLECTION

WXTDataPro_V2.R [01:20] /home/micromet/Roofprograms/WXT/WXTDataPro_V2.R L0: convert KSK, KSS and NDT WXT data into netcdf L1: check data on physically reasonable thresholds and correct wind direction to BNG north with temporal resolutions 5sec, 1min, 5min, 10 min, 30min Output saved to respective DAY directory on dataBridge01 DATA POCESSING Data02 Scripts in /home/micromet/Roofprograms dataBridge01 on /media/micromet/data RadRainNcdf.m [02:00~] /D drive on Otago:/Roof/Rad_Rain/RadRainNcdf.m (mergeARG.sh and mergeRAD.sh on Data02/home/micromet/script/cronJobs/) L0: converts radiation (CNR4 KSK, CNR1/Skye KSS, SPN1 & Eppleys/Skye KSS45W) and ARG100 data into netcdf Higher Levels: Please refer to the KUMA Manual PlotMetObs.sh [03:55] /home/micromet/Roofprograms/WXT/PlotMertObs.sh Use Matlab program PlotMetObs.m to generate eps plots for WXT data and radiation, combining all instruments from all sites Convert to png via gnuplot and save to /media/micromet/works/$YEAR/London/Level_1/MetObs ftp png plots MetObs.png and RadObs.png to web WXTgapFill.R [run on demand...] /home/micromet/Roofprograms/WXT/WXTgapFill.R L2: gap fill WXT data from KSK and KSS by a)Linear interpolationb) readings from alternative site c) predicted value

ARG100 Tipping bucket: precipitation [mm] WXT510 2D-sonic: horizontal wind speed [m/s], wind direction [ °] RAINCAP (counts hits by raindrops): precipitation [mm] BAROCAP (capacitive silicon sensor ): barometric pressure [hPa] THERMOCAP (capacitive ceramic sensor): air temperature [°C] HUMICAP (capacitive thin film polymer): relative humidity [%] CNR4 CM3up: shortwave incoming radiation [W/m 2 ] CM3dn: shortwave outgoing radiation [W/m 2 ] CG3up: longwave incoming radiation [W/m 2 ] CG3dn: longwave outgoing radiation [W/m 2 ] PT100: housing temperature [K] back KSK

back Power (red) IX1IXR Ground (black) CM3up signal + (red) 1H1L CM3up signal - (blue) CM3dn signal + (white) 2H2L CM3dn signal - (black) CG3up signal + (grey) 3H3L CG3up signal - (yellow) CG3dn signal + (brown) 4H4L CG3dn signal - (green) PT100 signal + (yellow) 8H8L PT100 signal - (green) CNR4 SDI-Signal (blue) 2 Serial-to-USB 35 SDI-Signal (white) Signal ground (green) Power (brown) -+ Ground (no) WXT510 Signal (black) P1 Signal ground (black) ARG100 KSK

ARG100 Tipping bucket: precipitation [mm] WXT510 2D-sonic: horizontal wind speed [m/s], wind direction [ °] RAINCAP (counts hits by raindrops): precipitation [mm] BAROCAP (capacitive silicon sensor ): barometric pressure [hPa] THERMOCAP (capacitive ceramic sensor): air temperature [°C] HUMICAP (capacitive thin film polymer): relative humidity [%] UV/PAR [μmol/m 2 s 1 and W/m 2 ] SKU420: UVA SKU430: UVB SKL2620: PAR (Photosynthetic active radiation) CNR1 CM3up: shortwave incoming radiation [W/m 2 ] CM3dn: shortwave outgoing radiation [W/m 2 ] CG3up: longwave incoming radiation [W/m 2 ] CG3dn: longwave outgoing radiation [W/m 2 ] PT100: housing temperature [K] back KSS

back Power for UV/PAR (red) G5V Ground for UV/PAR (black) Power (red) IX1IXR Ground (blue) UVA signal (yellow) 5H5L UVA signal ground (green) UVB signal (brown) 6H6L UVB signal ground (purple) 7H Quantum (blue) CM3up signal + (red) 1H1L CM3up signal - (blue) CM3dn signal + (white) 2H2L CM3dn signal - (black) CG3up signal + (purple) 3H3L CG3up signal - (yellow) CG3dn signal + (brown) 4H4L CG3dn signal - (green) PT100 signal + (yellow) 8H8L PT100 signal - (green) SDI-Signal (blue) 2 Serial-to-USB 35 SDI-Signal (white) Signal ground (green) Power (black) G12V Ground (red) CNR1 WXT510UV/PAR KSS

ARG100 Tipping bucket: precipitation [mm] UV/PAR [μmol/m 2 s 1 and W/m 2 ] SKU420: UVA SKU430: UVB SKL2620: PAR (Photosynthetic active radiation) CNR1 CM3up: shortwave incoming radiation [W/m 2 ] CM3dn: shortwave outgoing radiation [W/m 2 ] CG3up: longwave incoming radiation [W/m 2 ] CG3dn: longwave outgoing radiation [W/m 2 ] PT100: housing temperature [K] back KSS45W

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Conversion of measured Voltage into meteorological parameters by SimpleTowerProgram Short-wave in:VoltDiff(CM3Up,1,mV20,1,True,0,_50Hz, ,0) Short-wave out:VoltDiff(CM3Dn,1,mV20,2,True,0,_50Hz, ,0) Long-wave in:VoltDiff(CG3Up,1,mV20,3,True,0,_50Hz, ,0) Long-wave out:VoltDiff(CG3Dn,1,mV20,4,True,0,_50Hz, ,0) UVA:VoltDiff(UVAv,1,mV5000,5,True,0,_50Hz,1.0,-0.03) UVAW=UVAv* UVAm=UVAv* UVB:VoltDiff(UVBv,1,mV1000,6,True,0,_50Hz,1.0,0.14) UVBW=UVBv* UVBm=UVBv* Quantum:VoltSe(Quantumv,1,mV5000,13,True,0,_50Hz,1.0,0.08) QuantumW=Quantumv* Quantumm=Quantumv* CNR1 Temperature:Resistance(CNR1TK,1,mV200,8,Ix1,1,1675,True,True,200,250,0.01,0) PRT(CNR1TK,1,CNR1TK,1,273.15) CNR1TC=CNR1TK Net Radiation:NetR=(CM3Up-CM3Dn)+(CG3Up-CG3Dn) PrecipitationPulseCount(RainTips,1,2,2,0,1,0) back

WXT 510 Mean Data File Convention Who: Duick Young 22/7/07 File convention for data files stored in W:\KCLroof\YYYY\WXT510\MM\ File name structure WXTYYYYDDD_15.txt. File Convention started 16 th July 2007 (DOY 2197) Flags added 6 th August 2007 (DOY 218) Generated by: MATLAB using WXTmeanplot#.m ColumnVariable Units 1Day of Year (DOY) 2 Decimal Time 3 Hour 4 Minute 5 Number of Samples 6 Wind Speed Minimum m s -1 7 Wind Speed Mean m s -1 8 Wind Speed Maximum m s -1 9 Air Temperature °C 10 Relative Humidity % 11 Air Pressure hPa 12 U (Wind Component) m s V (Wind Component) m s Wind Direction ° 15 Total Rain Accumulation mm 16 Total Rain Duration s 17 Total Hail Accumulation hits cm Total Hail Duration s 19 Standard Deviation – Wind Speed Minimum m s Standard Deviation – Wind Speed Mean m s Standard Deviation – Wind Speed Maximum m s Standard Deviation – Air Temperature °C 23 Standard Deviation – Relative Humidity % 24 Standard Deviation – Air Pressure hPa 25 Standard Deviation – U m s Standard Deviation – V m s Flag Flags 1 Data fine 5 Less than 90 data lines in 15 minute averaging period 6 No data present during 15 minute averaging period CNR1 Mean Data File Convention Who: Duick Young 23 March 2009 File convention for data files stored in...\KCLroof\YYYY\CR5000\ File name structure RFYYDDD.dat File convention started: 18 th August 2008 (DOY 231) Generated by: Simple Tower Program _V1.1.CR3 ColumnVariable Units 1Year 2Month 3 Day 4Hour 5Minute 6Kdn- AverageW m -2 7Kdn-- Standard DeviationW m -2 8Kup - AverageW m -2 9Kup - Standard DeviationW m -2 10Ldn-- AverageW m -2 11Ldn-- Standard DeviationW m -2 12Lup - AverageW m -2 13Lup - Standard DeviationW m -2 14CNR1 Temperature - Average °C 15CNR1 Temperature – StDev ° C 16CNR1 Temperature – AverageK 17CNR1 Temperature – StDevK 18Net Radiation – AverageW m -2 19Net Radiation – StDevW m -2 20UVA – Averageμmol m -2 s -1 21UVB – Averageμmol m -2 s -1 22Quantum (PAR) – Averageμmol m -2 s -1 23UVA – AverageW m -2 24UVB – AverageW m -2 25Quantum (PAR) – AverageW m -2 26UVA - Standard Deviationμmol m -2 s -1 27UVB - Standard Deviationμmol m -2 s -1 28Quantum (PAR) – StDevμmol m -2 s -1 29Quantum (PAR) – StDevμmol m -2 s -1 30Tipping Bucket Rain Gaugemm back

WXT 510/CNR1 Mean Data File Convention Who: Duick Young 6 Aug 2007 File convention for data files stored in W:\KCLroof\YYYY\WXT510\MM\ File name structure LRYYYYDDD_15.txt. File Convention started 25 th July 2007 (DOY 206) Flag (Column 27) added 3 rd August 2007 (DOY 214) Tipping Bucket Raingauge added 18 August 2008 (DOY 231) Generated by: MATLAB using WXTmeanplot#.m Column Variable Units 1Day of Year (DOY) 2Decimal Time 3Hour 4Minute 5Number of Samples 6Wind Speed Minimumm s -1 7Wind Speed Meanm s -1 8Wind Speed Maximum m s -1 9Air Temperature°C 10Relative Humidity% 11Air PressurehPa 12U (Wind Component)m s -1 13V (Wind Component)m s -1 14Wind Direction° 15Total Rain Accumulationmm 16Total Rain Durations 17Total Hail Accumulation hits cm -2 18Total Hail Durations 19StDev – Wind Speed Minimumm s -1 20StDev– Wind Speed Meanm s -1 21StDev– Wind Speed Maximumm s -1 22StDev– Air Temperature°C 23StDev– Relative Humidity% 24StDev– Air PressurehPa Column Variable Units 25 StDev– U m s StDev– Vm s -1 27Flag 28K¯ - AverageW m -2 29K¯- Standard DeviationW m -2 30K↑ - AverageW m -2 31K↑- Standard DeviationW m -2 32L¯- AverageW m -2 33L¯- Standard DeviationW m -2 34L↑ - AverageW m -2 35L↑ - Standard DeviationW m -2 36CNR1 Temperature – Average°C 37CNR1 Temperature - Standard Deviation°C 38CNR1 Temperature – AverageK 39CNR1 Temperature - Standard DeviationK 40Net Radiation – AverageW m -2 41Net Radiation - Standard DeviationW m -2 42UVA – Averageμmol m -2 s -1 43UVB – Averageμmol m -2 s -1 44Quantum (PAR) – Averageμmol m -2 s -1 45UVA – AverageW m -2 46UVB – AverageW m -2 47Quantum (PAR) – AverageW m -2 48UVA - Standard Deviationμmol m -2 s -1 49UVB - Standard Deviationμmol m -2 s -1 50Quantum (PAR) - Standard Deviationμmol m -2 s -1 51Surface Albedo 52 Rain (Tipping Bucket) mm Flags 1Data fine 5Less than 90 data lines in 15 minute averaging period 6No data present during 15 minute averaging period back

TROUBLESHOOT In case data have been collected by Roof8 or Roof3 but are missing on Otago, grab data with: D:\roof\co2\wxtGasGrabCeilAB_GetMissingData.m (latest version) 1.Adjust time settings in the code Year Month Day hour_orig (the first hour to be moved) Nperiods (number of hourly periods in one day – run program separately for each day) 2.check file sizes are correct in I:\YYYY\London\$site\WXT510\FORMAT_L0\WXTYYYYDOY_HH.txt 3.Rerun scripts on data01: /home/micromet/Roofprograms 1)WXT/WXTDataPro.R 2)WXT/PlotMetObs.sh 4.For radiation (CNR’s, SPN1, Eppleys, Skye) and ARG100 dataset 1)Rerun matlab program on Otago D drive:/Roof/Rad_Rain/RadRainNncdf.m 2)Rerun script at data02:/home/micromet/script/cronJobs/ -> mergeARG.sh and mergeRAD.sh back