{ "cells": [ { "cell_type": "code", "execution_count": 1, "metadata": { "collapsed": true }, "outputs": [], "source": [ "%matplotlib inline" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "collapsed": false }, "outputs": [], "source": [ "import pandas as pd" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "collapsed": true }, "outputs": [], "source": [ "import xray" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "collapsed": true }, "outputs": [], "source": [ "url = 'http://opendap-devel.ooi.rutgers.edu:8090/thredds/dodsC/eov-1/Coastal_Pioneer/CP05MOAS/02-FLORTM000/recovered_host/CP05MOAS-GL388-02-FLORTM000-flort_m_glider_recovered-recovered_host/CP05MOAS-GL388-02-FLORTM000-recovered_host-flort_m_glider_recovered-20141207T213258-20141208T190652.nc'" ] }, { "cell_type": "code", "execution_count": 5, "metadata": { "collapsed": false }, "outputs": [], "source": [ "ds = xray.open_dataset(url)" ] }, { "cell_type": "code", "execution_count": 6, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "\n", "Dimensions: (computed_provenance_dim: 1, instrument_provenance_dim: 1, l0_provenance: 41, obs: 34612, query_parameter_provenance_dim: 1)\n", "Coordinates:\n", " time (obs) datetime64[ns] ...\n", " int_ctd_pressure (obs) float64 ...\n", " lon (obs) float64 ...\n", " lat (obs) float64 ...\n", " * computed_provenance_dim (computed_provenance_dim) int64 0\n", " * instrument_provenance_dim (instrument_provenance_dim) int64 0\n", " * l0_provenance (l0_provenance) int64 0 1 2 3 4 5 6 7 8 ...\n", " * obs (obs) int64 0 1 2 3 4 5 6 7 8 9 10 11 ...\n", " * query_parameter_provenance_dim (query_parameter_provenance_dim) int64 0\n", "Data variables:\n", " query_parameter_provenance (query_parameter_provenance_dim) |S64 ...\n", " computed_provenance (computed_provenance_dim) |S64 ...\n", " l0_provenance_keys (l0_provenance) |S64 ...\n", " l0_provenance_data (l0_provenance) |S64 ...\n", " instrument_provenance (instrument_provenance_dim) |S64 ...\n", " port_timestamp (obs) datetime64[ns] ...\n", " driver_timestamp (obs) datetime64[ns] ...\n", " internal_timestamp (obs) datetime64[ns] ...\n", " preferred_timestamp (obs) object ...\n", " deployment (obs) int32 ...\n", " flort_m_bback_total (obs) float32 ...\n", " flort_m_scat_seawater (obs) float32 ...\n", " provenance (obs) |S64 ...\n", " ingestion_timestamp (obs) datetime64[ns] ...\n", " m_present_secs_into_mission (obs) float64 ...\n", " m_present_time (obs) datetime64[ns] ...\n", " id (obs) |S64 ...\n", " sci_flbbcd_bb_ref (obs) float64 ...\n", " sci_flbbcd_bb_sig (obs) float64 ...\n", " sci_flbbcd_bb_units (obs) float64 ...\n", " sci_flbbcd_cdom_ref (obs) float64 ...\n", " sci_flbbcd_cdom_sig (obs) float64 ...\n", " sci_flbbcd_cdom_units (obs) float64 ...\n", " sci_flbbcd_chlor_ref (obs) float64 ...\n", " sci_flbbcd_chlor_sig (obs) float64 ...\n", " sci_flbbcd_chlor_units (obs) float64 ...\n", " sci_flbbcd_therm (obs) float64 ...\n", " sci_flbbcd_timestamp (obs) datetime64[ns] ...\n", " sci_m_present_secs_into_mission (obs) float64 ...\n", " sci_m_present_time (obs) datetime64[ns] ...\n", " l0_provenance_information (obs) |S64 ...\n", "Attributes:\n", " node: GL388\n", " comment: \n", " publisher_email: \n", " sourceUrl: http://oceanobservatories.org/\n", " collection_method: recovered_host\n", " stream: flort_m_glider_recovered\n", " featureType: point\n", " creator_email: \n", " publisher_name: Ocean Observatories Initiative\n", " date_modified: 2015-12-28T20:04:06.185702\n", " date_created: 2015-12-28T20:04:06.185694\n", " keywords: \n", " cdm_data_type: Point\n", " references: More information can be found at http://oceanobservatories.org/\n", " Metadata_Conventions: Unidata Dataset Discovery v1.0\n", " deployment: 1\n", " id: CP05MOAS-GL388-02-FLORTM000-recovered_host-flort_m_glider_recovered\n", " requestUUID: 3b34d6d1-3d1d-4f60-955d-8579d147392c\n", " contributor_role: \n", " summary: Dataset Generated by Stream Engine from Ocean Observatories Initiative\n", " keywords_vocabulary: \n", " institution: Ocean Observatories Initiative\n", " naming_authority: org.oceanobservatories\n", " feature_Type: point\n", " infoUrl: http://oceanobservatories.org/\n", " license: \n", " contributor_name: \n", " uuid: 3b34d6d1-3d1d-4f60-955d-8579d147392c\n", " creator_name: Ocean Observatories Initiative\n", " title: Data produced by Stream Engine version 0.8.4 for CP05MOAS-GL388-02-FLORTM000-recovered_host-flort_m_glider_recovered\n", " sensor: 02-FLORTM000\n", " standard_name_vocabulary: NetCDF Climate and Forecast (CF) Metadata Convention Standard Name Table 29\n", " acknowledgement: \n", " Conventions: CF-1.6\n", " project: Ocean Observatories Initiative\n", " source: CP05MOAS-GL388-02-FLORTM000-recovered_host-flort_m_glider_recovered\n", " publisher_url: http://oceanobservatories.org/\n", " creator_url: http://oceanobservatories.org/\n", " nodc_template_version: NODC_NetCDF_TimeSeries_Orthogonal_Template_v1.1\n", " subsite: CP05MOAS\n", " processing_level: L2\n", " history: 2015-12-28T20:04:06.185586 generated from Stream Engine\n", " time_coverage_start: 2014-12-07T21:32:58.344210\n", " time_coverage_end: 2014-12-08T19:06:52.651550\n", " time_coverage_resolution: P2.24S\n", " location_name: None\n", " geospatial_lat_min: -88.0465462022\n", " geospatial_lat_max: 39.8952888751\n", " geospatial_lon_min: -198.801452897\n", " geospatial_lon_max: -70.8965500002\n", " geospatial_lat_units: degrees_north\n", " geospatial_lat_resolution: 0.1\n", " geospatial_lon_units: degrees_east\n", " geospatial_lon_resolution: 0.1\n", " geospatial_vertical_units: m\n", " geospatial_vertical_resolution: 0.1\n", " geospatial_vertical_positive: down\n", " DODS.strlen: 151\n", " DODS.dimName: string151" ] }, "execution_count": 6, "metadata": {}, "output_type": "execute_result" } ], "source": [ "ds" ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "collapsed": true }, "outputs": [], "source": [ "#Create a Pandas time series" ] }, { "cell_type": "code", "execution_count": 8, "metadata": { "collapsed": false }, "outputs": [], "source": [ "vts = pd.Series(ds['flort_m_bback_total'].values,index=ds['time'])" ] }, { "cell_type": "code", "execution_count": 9, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 9, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": 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LRx4Z/t28OTy3e3rCthMm7Os3u7tDjXftCvtOmhSO79bW8He86aZwjCxbFo7z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\nABH/Dc5kMQn8NBuYAAAAAElFTkSuQmCC\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "vts_1h = vts.resample('1min', how='mean')\n", "vts_1h.plot(figsize=(12,4))" ] }, { "cell_type": "code", "execution_count": null, "metadata": { "collapsed": true }, "outputs": [], "source": [] }, { "cell_type": "code", "execution_count": null, "metadata": { "collapsed": true }, "outputs": [], "source": [] } ], "metadata": { "kernelspec": { "display_name": "Python 2", "language": "python", "name": "python2" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 2 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython2", "version": "2.7.10" } }, "nbformat": 4, "nbformat_minor": 0 }