iAWE is a wonderful dataset for those of us who work on Non-Intrusive Load Monitoring (NILM) algorithms.

Overview


Ax

Description

iAWE is a wonderful dataset for those of us who work on Non-Intrusive Load Monitoring (NILM) algorithms. You can find its main page and description via this link. If you are familiar with NILM-TK API, you probably know that you can work with iAWE hdf5 data file in NILM-TK. However I faced some problems that convinced me to Not use NILM-TK and iAWE hdf5 datafile. Instead, I decided to use the iAWE appliance consumption CSV files and preprocess them myself. So if you have problems with NILM-TK API and iAWE hdf5 data file too, this piece of code may help you to prepare 11 appliance consumption data for your NILM algorithm.

Installation

  • First, download the iAWE dataset using this link (also available on iAWE page!).
  • Download the electricity.tar.gz file.


Ax

  • Download the repo and all its folders.
  • Unzip the electricity.tar.gz and copy all 12 CSV file (plus the labels file into the electricity folder of the downloaded repo.
  • Now everythng is ready for you to start the data preprocessing using the main.py file. But before running the code let me show you what kind of problems we had with the original iAWE hdf5 file.

What problems did we solve?

Well, to be honest NILM-TK documentation is not very clear! If you try to use the hdf5 datafile of the datasets that works with NILM-TK, soon you will admit it. Sometimes you find the the similiar questions on stack overflow but when you try them, they simply don't work due to some updates in NILM-TK (undocumented maybe!?). So, having full control on the data was my main incentive to redo the data preprocessing by my self. You see 12 CSV files in your downloaded files. They belong to:

  • main meter (1)
  • main meter (2)
  • fridge
  • air conditioner (1)
  • air conditioner (2)
  • washing machine
  • laptop
  • iron
  • kitchen outlets
  • television
  • water filter
  • water motor The publisher of iAWE dataset has recommended to ignore the water motor CSV file as it is not accurate (so did we!). Each CSV file consists of timestamp, W, VAR, VA, f, V, PF and A columns. timestamp can be read and converted to read time and date by Python libraries. The publisher of dataset have collected time stamps to reduce the size of final data files which means there is no sampling when the appliances are not consuming power. On the other hand the start time of different appliances measurement is not the same so the length, start and end of most csv files are different. When you plot it in NILM-TK it is fine becuase it reads the timestamps and ignores the NA time steps. However when you want to feed this data into your algorithm it will be a problem which needs data preprocessing. To better understand the problem when using the raw data in iAWE dataset, I've plotted W (active power) of the air conditioner which is CSV file number 4.


AC

As you see, when youplot it in Python the NA timestamp will be plotted as a direct line between last available data and the next available one. It is neither human readable (to some extents!) nor NILM algorithm readable. In fact what your NILM algorithm will be fed with is the series of these values because your algorithm has nothing to do with timestamps! See this is what NILM algorithm sees as the AC power consumption:


AC WO

Now to make it both human readable and NILM algorithm readable, I did as below: (I've commented the code so you can see what is happening in every part of the code)

  • Loaded all CSV files in a dictionary of Dataframes with CSV file orders
  • Measured the lowes and highest timestamp in order to know the length of the measurement period (they have different lengthes!)
  • Created a big dataframe of zeros with from lowest timestamp to the highest one as its index
  • Used the update method on dataframes to transfer the values of dataframes to the big dataframes of zeros (Now all of them have the same length)
  • Putting all dfs into a dictionary of dataframes
  • Casting all the dataframes into the efficient period of sampling (Because now we know which part of sampling is useless)
  • Removing NAN values
  • Dropping unwanted columns
  • Filling NA values with last available value in dataframes
  • Saving all the dataframes as CSV files in the prepared data folder
  • Done!


AC WO

Conclusion

Basically, what we have here after running this code is 11 CSV files of W, VAR, VA, f, V, PF and A for 11 different meters. Prepared CSV file are all of the same length without NAN or NA values which are ready to be fed to any NILM algorithm. Despite the fact that I've done these changes to iAWE dataset, I'm sure the publishers of this dataset have much better solution via NILM-TK to have such an output. However due to lack of documentation or changes in their code I prefered to do this data preprocessing myself. Hope you enjoy it!

Owner
Mozaffar Etezadifar
NILM and RL researcher @ Polytechnique Montreal
Mozaffar Etezadifar
8-puzzle-solver with UCS, ILS, IDA* algorithm

Eight Puzzle 8-puzzle-solver with UCS, ILS, IDA* algorithm pre-usage requirements python3 python3-pip virtualenv prepare enviroment virtualenv -p pyth

Mohsen Arzani 4 Sep 22, 2021
A simple library for implementing common design patterns.

PyPattyrn from pypattyrn.creational.singleton import Singleton class DummyClass(object, metaclass=Singleton): # DummyClass is now a Singleton!

1.7k Jan 01, 2023
Genetic algorithms are heuristic search algorithms inspired by the process that supports the evolution of life.

Genetic algorithms are heuristic search algorithms inspired by the process that supports the evolution of life. The algorithm is designed to replicate the natural selection process to carry generatio

Mahdi Hassanzadeh 4 Dec 24, 2022
Genius Square puzzle solver in Python

Genius Square puzzle solver in Python

James 3 Dec 15, 2022
A Python program to easily solve the n-queens problem using min-conflicts algorithm

QueensProblem A program to easily solve the n-queens problem using min-conflicts algorithm Performances estimated with a sample of 1000 different rand

0 Oct 21, 2022
FPE - Format Preserving Encryption with FF3 in Python

ff3 - Format Preserving Encryption in Python An implementation of the NIST approved FF3 and FF3-1 Format Preserving Encryption (FPE) algorithms in Pyt

Privacy Logistics 42 Dec 16, 2022
Genetic Algorithm for Robby Robot based on Complexity a Guided Tour by Melanie Mitchell

Robby Robot Genetic Algorithm A Genetic Algorithm based Robby the Robot in Chapter 9 of Melanie Mitchell's book Complexity: A Guided Tour Description

Matthew 2 Dec 01, 2022
Python sample codes for robotics algorithms.

PythonRobotics Python codes for robotics algorithm. Table of Contents What is this? Requirements Documentation How to use Localization Extended Kalman

Atsushi Sakai 17.2k Jan 01, 2023
An implementation of ordered dithering algorithm in python as multimedia course project

One way of minimizing the size of an image is to simply reduce the number of bits you use to represent each pixel.

7 Dec 02, 2022
Provide player's names and mmr and generate mathematically balanced teams

Lollo's matchmaking algorithm Provide player's names and mmr and generate mathematically balanced teams How to use Fill the input.json file with your

4 Aug 04, 2022
Ralebel is an interpreted, Haitian Creole programming language that aims to help Haitians by starting with the fundamental algorithm

Ralebel is an interpreted, Haitian Creole programming language that aims to help Haitians by starting with the fundamental algorithm

Lub Lorry Lamysère 5 Dec 01, 2022
There are some basic arithmatic in Pattern Recognization and Machine Learning writed in Python in this repository

There are some basic arithmatic in Pattern Recognization and Machine Learning writed in Python in this repository

1 Nov 19, 2021
A litle algorithm that i made for transform a picture in a spreadsheet.

PicsToSheets How it works? It is an algorithm designed to transform an image into a spreadsheet file. this converts image pixels to color cells of she

Guilherme de Oliveira 1 Nov 12, 2021
Visualisation for sorting algorithms. Version 2.0

Visualisation for sorting algorithms v2. Upped a notch from version 1. This program provides animates simple, common and popular sorting algorithms, t

Ben Woo 7 Nov 08, 2022
This is the code repository for 40 Algorithms Every Programmer Should Know , published by Packt.

40 Algorithms Every Programmer Should Know, published by Packt

Packt 721 Jan 02, 2023
Cormen-Lib - An academic tool for data structures and algorithms courses

The Cormen-lib module is an insular data structures and algorithms library based on the Thomas H. Cormen's Introduction to Algorithms Third Edition. This library was made specifically for administeri

Cormen Lib 12 Aug 18, 2022
A fast, pure python implementation of the MuyGPs Gaussian process realization and training algorithm.

Fast implementation of the MuyGPs Gaussian process hyperparameter estimation algorithm MuyGPs is a GP estimation method that affords fast hyperparamet

Lawrence Livermore National Laboratory 13 Dec 02, 2022
causal-learn: Causal Discovery for Python

causal-learn: Causal Discovery for Python Causal-learn is a python package for causal discovery that implements both classical and state-of-the-art ca

589 Dec 29, 2022
A fast python implementation of the SimHash algorithm.

This Python package provides hashing algorithms for computing cohort ids of users based on their browsing history. As such, it may be used to compute cohort ids of users following Google's Federated

Hybrid Theory 19 Dec 15, 2022
Implementation of Apriori algorithms via Python

Installing run bellow command for installing all packages pip install -r requirements.txt Data Put csv data under this directory "infrastructure/data

Mahdi Rezaei 0 Jul 25, 2022