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Go Reference Go Report Card

peakdetect

Detect peaks in realtime timeseries data using z-scores. This is a Golang implementation for the algorithm described by this StackOverflow answer.

Unlike some implementations, a goal is to minimize the memory footprint and allow for the processing of new data points without reprocessing old ones.

import "github.com/MicahParks/peakdetect"

Configuration

Lag determines how much your data will be smoothed and how adaptive the algorithm is to change in the long-term average of the data. The more stationary your data is, the more lags you should include (this should improve the robustness of the algorithm). If your data contains time-varying trends, you should consider how quickly you want the algorithm to adapt to these trends. I.e., if you put lag at 10, it takes 10 'periods' before the algorithm's threshold is adjusted to any systematic changes in the long-term average. So choose the lag parameter based on the trending behavior of your data and how adaptive you want the algorithm to be.

Influence determines the influence of signals on the algorithm's detection threshold. If put at 0, signals have no influence on the threshold, such that future signals are detected based on a threshold that is calculated with a mean and standard deviation that is not influenced by past signals. If put at 0.5, signals have half the influence of normal data points. Another way to think about this is that if you put the influence at 0, you implicitly assume stationary ( i.e. no matter how many signals there are, you always expect the time series to return to the same average over the long term). If this is not the case, you should put the influence parameter somewhere between 0 and 1, depending on the extent to which signals can systematically influence the time-varying trend of the data. E.g., if signals lead to a structural break of the long-term average of the time series, the influence parameter should be put high (close to 1) so the threshold can react to structural breaks quickly

Threshold is the number of standard deviations from the moving mean above which the algorithm will classify a new datapoint as being a signal. For example, if a new datapoint is 4.0 standard deviations above the moving mean and the threshold parameter is set as 3.5, the algorithm will identify the datapoint as a signal. This parameter should be set based on how many signals you expect. For example, if your data is normally distributed, a threshold (or: z-score) of 3.5 corresponds to a signaling probability of 0.00047 (from this table), which implies that you expect a signal once every 2128 datapoints (1/0.00047). The threshold therefore directly influences how sensitive the algorithm is and thereby also determines how often the algorithm signals. Examine your own data and choose a sensible threshold that makes the algorithm signal when you want it to (some trial-and-error might be needed here to get to a good threshold for your purpose)

Usage

package main

import (
	"fmt"
	"log"

	"github.com/MicahParks/peakdetect"
)

// This example is the equivalent of the R example from the algorithm's author.
// https://stackoverflow.com/a/54507329/14797322
func main() {
	data := []float64{1, 1, 1.1, 1, 0.9, 1, 1, 1.1, 1, 0.9, 1, 1.1, 1, 1, 0.9, 1, 1, 1.1, 1, 1, 1, 1, 1.1, 0.9, 1, 1.1, 1, 1, 0.9, 1, 1.1, 1, 1, 1.1, 1, 0.8, 0.9, 1, 1.2, 0.9, 1, 1, 1.1, 1.2, 1, 1.5, 1, 3, 2, 5, 3, 2, 1, 1, 1, 0.9, 1, 1, 3, 2.6, 4, 3, 3.2, 2, 1, 1, 0.8, 4, 4, 2, 2.5, 1, 1, 1}

	// Algorithm configuration from example.
	const (
		lag       = 30
		threshold = 5
		influence = 0
	)

	// Create then initialize the peak detector.
	detector := peakdetect.NewPeakDetector()
	err := detector.Initialize(influence, threshold, data[:lag]) // The length of the initial values is the lag.
	if err != nil {
		log.Fatalf("Failed to initialize peak detector.\nError: %s", err)
	}

	// Start processing new data points and determine what signal, if any they produce.
	//
	// This method, .Next(), is best for when data are being processed in a stream, but this simply iterates over a
	// slice.
	nextDataPoints := data[lag:]
	for i, newPoint := range nextDataPoints {
		signal := detector.Next(newPoint)
		var signalType string
		switch signal {
		case peakdetect.SignalNegative:
			signalType = "negative"
		case peakdetect.SignalNeutral:
			signalType = "neutral"
		case peakdetect.SignalPositive:
			signalType = "positive"
		}

		println(fmt.Sprintf("Data point at index %d has the signal: %s", i+lag, signalType))
	}

	// This method, .NextBatch(), is a helper function for processing many data points at once. It's returned slice
	// should produce the same signal outputs as the loop above.
	signals := detector.NextBatch(nextDataPoints)
	println(fmt.Sprintf("1:1 ratio of batch inputs to signal outputs: %t", len(signals) == len(nextDataPoints)))
}

Testing

$ go test -cover -race
PASS
coverage: 100.0% of statements
ok      github.com/MicahParks/peakdetect        0.019s

Performance

To further improve performance, this algorithm uses Welford's algorithm on initialization and an adaptation of this StackOverflow answer to calculate the mean and population standard deviation for the lag period (sliding window). This appears to improve performance by more than a factor of 10!

v0.0.4

goos: linux
goarch: amd64
pkg: github.com/MicahParks/peakdetect
cpu: Intel(R) Core(TM) i5-9600K CPU @ 3.70GHz
BenchmarkPeakDetector_NextBatch
BenchmarkPeakDetector_NextBatch-6   	1000000000	         0.0000278 ns/op
PASS

v0.0.5

goos: linux
goarch: amd64
pkg: github.com/MicahParks/peakdetect
cpu: Intel(R) Core(TM) i5-9600K CPU @ 3.70GHz
BenchmarkPeakDetector_NextBatch-6       1000000000               0.0000013 ns/op
PASS
ok      github.com/MicahParks/peakdetect        0.002s

References

Brakel, J.P.G. van (2014). "Robust peak detection algorithm using z-scores". Stack Overflow. Available at: https://stackoverflow.com/questions/22583391/peak-signal-detection-in-realtime-timeseries-data/22640362#22640362 (version: 2020-11-08).

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Detect peaks in realtime timeseries data using z-scores. This is a Golang implementation for the algorithm described by: https://stackoverflow.com/a/22640362/14797322

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