Skip to main content

Programming- and CLI-Interface for the h5-dataformat of the Shepherd-Testbed

Project description

version version

Shepherd - Data

This Python Module eases the handling of hdf5-recordings used by the shepherd-testbed. Users can read, validate and create files and also extract, down-sample and plot information.

Installation

Via PIP

pip3 install shepherd-data

Manual

  • clone repository
  • navigate shell into directory
  • activate and update pipenv (optional)
    • for developers: add special packages
  • install module
git clone https://github.com/orgua/shepherd-datalib
cd .\shepherd-datalib

pipenv shell
pipenv update
pipenv install -d

python setup.py install

Programming Interface

Basic Usage (recommendation)

import shepherd_data as shpd

with shpd.Reader("./hrv_sawtooth_1h.h5") as db:
    print(f"Mode: {db.get_mode()}")
    print(f"Window: {db.get_window_samples()}")
    print(f"Config: {db.get_config()}")

Available Functionality

  • Reader()
    • file can be checked for plausibility and validity (is_valid())
    • internal structure of h5file (get_metadata() or save_metadata() ... to yaml) with lots of additional data
    • access data and various converters, calculators
      • read_buffers() -> generator that provides one buffer per call, can be configured on first call
      • get_calibration_data()
      • get_windows_samples()
      • get_mode()
      • get_config()
      • direct access to root h5-structure via reader['element']
      • converters for raw / physical units: si_to_raw() & raw_to_si()
      • energy() sums up recorded power over time
    • downsample() (if needed) visualize recording (plot_to_file())
  • Writer()
    • inherits all functionality from Reader
    • append_iv_data_raw()
    • append_iv_data_si()
    • set_config()
    • set_windows_samples()
  • IVonne Reader
    • convert_2_ivcurves() converts ivonne-recording into a shepherd ivcurve
    • upsample_2_isc_voc() TODO: for now a upsampled but unusable version of samples of short-circuit-current and open-circuit-voltage
    • convert_2_ivsamples() already applies a simple harvesting-algo and creates ivsamples
  • ./examples/
    • example_convert_ivonne.py converts IVonne recording (jogging_10m.iv) to shepherd ivcurves, NOTE: slow implementation
    • example_extract_logs.py is analyzing all files in directory, saves logging-data and calculates cpu-load and data-rate
    • example_generate_sawtooth.py is using Writer to generate a 60s ramp with 1h repetition and uses Reader to dump metadata of that file
    • example_plot_traces.py demos some mpl-plots with various zoom levels
    • example_repair_recordings.py makes old recordings from shepherd 1.x fit for v2
    • jogging_10m.iv
      • 50 Hz measurement with Short-Circuit-Current and two other parameters
      • recorded with "IVonne"

CLI-Interface

After installing the module the datalib offers some often needed functionality on the command line:

Validate Recordings

  • takes a file or directory as an argument
shepherd-data validate dir_or_file

# examples:
shepherd-data validate ./
shepherd-data validate hrv_saw_1h.h5

Extract IV-Samples to csv

  • takes a file or directory as an argument
  • can take down-sample-factor as an argument
shepherd-data extract dir_or_file [-f ds_factor] [-s separator_symbol]

# examples:
shepherd-data extract ./
shepherd-data extract hrv_saw_1h.h5 -f 1000 -s;

Extract meta-data and sys-logs

  • takes a file or directory as an argument
shepherd-data extract-meta dir_or_file

# examples:
shepherd-data extract-meta ./
shepherd-data extract-meta hrv_saw_1h.h5

Plot IVSamples

  • takes a file or directory as an argument
  • can take start- and end-time as an argument
  • can take image-width and -height as an argument
shepherd-data plot dir_or_file [-s start_time] [-e end_time] [-w plot_width] [-h plot_height] [--multiplot]

# examples:
shepherd-data plot ./ --multiplot
shepherd-data plot hrv_saw_1h.h5 -s10 -e20

Downsample IVSamples (for later GUI-usage, TODO)

  • generates a set of downsamplings (20 kHz to 0.1 Hz in x4 to x5 Steps)
  • takes a file or directory as an argument
  • can take down-sample-factor as an argument
shepherd-data downsample dir_or_file [-f ds_factor]

# examples:
shepherd-data downsample ./ 
shepherd-data downsample hrv_saw_1h.h5 -f 1000

Data-Layout and Design choices

Details about the file-structure can be found in the main-project.

Modes and Datatypes

  • Mode harvester recorded a harvesting-source like solar with one of various algorithms
    • Datatype ivsample is directly usable by shepherd, input for virtual source / converter
    • Datatype ivcurve is directly usable by shepherd, input for a virtual harvester (output are ivsamples)
    • Datatype isc_voc is specially for solar-cells and needs to be (at least) transformed into ivcurves later
  • Mode emulator replayed a harvester-recording through a virtual converter and supplied a target while recording the power-consumption
    • Datatype ivsample is the only output of this mode

Compression & Beaglebone

  • supported are uncompressed, lzf and gzip with level 1 (order of recommendation)
    • lzf seems better-suited due to lower load, or if space isn't a constraint: uncompressed (None as argument)
    • note: lzf seems to cause trouble with some third party hdf5-tools
    • compression is a heavy load for the beaglebone, but it got more performant with recent python-versions
  • size-experiment A: 24 h of ramping / sawtooth (data is repetitive with 1 minute ramp)
    • gzip-1: 49'646 MiB -> 588 KiB/s
    • lzf: 106'445 MiB -> 1262 KiB/s
    • uncompressed: 131'928 MiB -> 1564 KiB/s
  • cpu-load-experiments (input is 24h sawtooth, python 3.10 with most recent libs as of 2022-04)
    • warning: gpio-traffic and other logging-data can cause lots of load
  emu_120s_gz1_to_gz1.h5 	-> emulator, cpu_util [%] = 65.59, data-rate =  352.0 KiB/s
  emu_120s_gz1_to_lzf.h5 	-> emulator, cpu_util [%] = 57.37, data-rate =  686.0 KiB/s
  emu_120s_gz1_to_unc.h5 	-> emulator, cpu_util [%] = 53.63, data-rate = 1564.0 KiB/s
  emu_120s_lzf_to_gz1.h5 	-> emulator, cpu_util [%] = 63.18, data-rate =  352.0 KiB/s
  emu_120s_lzf_to_lzf.h5 	-> emulator, cpu_util [%] = 58.60, data-rate =  686.0 KiB/s
  emu_120s_lzf_to_unc.h5 	-> emulator, cpu_util [%] = 55.75, data-rate = 1564.0 KiB/s
  emu_120s_unc_to_gz1.h5 	-> emulator, cpu_util [%] = 63.84, data-rate =  351.0 KiB/s
  emu_120s_unc_to_lzf.h5 	-> emulator, cpu_util [%] = 57.28, data-rate =  686.0 KiB/s
  emu_120s_unc_to_unc.h5 	-> emulator, cpu_util [%] = 51.69, data-rate = 1564.0 KiB/s 

Open Tasks

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

shepherd_data-2022.5.1.tar.gz (25.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

shepherd_data-2022.5.1-py3-none-any.whl (23.5 kB view details)

Uploaded Python 3

File details

Details for the file shepherd_data-2022.5.1.tar.gz.

File metadata

  • Download URL: shepherd_data-2022.5.1.tar.gz
  • Upload date:
  • Size: 25.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.10.4

File hashes

Hashes for shepherd_data-2022.5.1.tar.gz
Algorithm Hash digest
SHA256 ed065bac95954f8032d6f731dfea9be57e1d56acc9d9d5f50eb8942abbef4054
MD5 b5997fde51814a76bbfe698d85e9e341
BLAKE2b-256 d2e965c416e3276219d1cacaf216ecf60db9638c819a6f4df6bafcffed6a8935

See more details on using hashes here.

File details

Details for the file shepherd_data-2022.5.1-py3-none-any.whl.

File metadata

File hashes

Hashes for shepherd_data-2022.5.1-py3-none-any.whl
Algorithm Hash digest
SHA256 a075af8f5365149275a44bdab18e0261e150e97d7867a69f6879e3ade312d808
MD5 90143b4d2e20a44f6503d8f77d99ea51
BLAKE2b-256 dacee9d8fb6b7761e0bccbd8533f4a2e5433fc016b0d76c6f28bc1a704b5a506

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page