Combie two query results in grafana - grafana
I have what I had thought was a simple use-case, but its turning out to be quite difficult.
I have 2 influxdb buckets, one that logs my electricity meter price, and day vs night rate, and another than logs the energy being imported.
what I would like to do is combine these to generate graphs of the amount of energy use on day-rate and on night-rate.
I can query the data with the following flux commands:
Get night-tate (boolean)
from(bucket: "home")
|> range(start: v.timeRangeStart, stop:v.timeRangeStop)
|> filter(fn: (r) => r["friendly_name"] == "Is NightRate")
|> map(fn: (r) => ({r with _value: strings.toLower(v: r._value)}))
|> toBool()
|> toFloat()
Get Energy Imported
from(bucket: "PV")
|> range(start: v.timeRangeStart, stop: v.timeRangeStop)
|> filter(fn: (r) => r["_measurement"] == "PV")
|> filter(fn: (r) => r["_field"] == "Total_Energy_Purchased")
|> aggregateWindow(every: 1h, fn: mean, createEmpty: false)
|> difference()
These return a different number of rows - 2 in the first query and 24 in the second (for a day).
I basically want to multiply one by the other so it shows the usage only when day-rate is a 1. Any ideas how this can be done?
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How to eliminate last residual data point in InfluxDB aggregatewindow query
I have a query question with InfluxDB; I am trying to aggregate the data per day and get the medians. The dates are truncated to the start of the day (00:00:000) But, the query returns one more last data which is not truncated to the start of the day; How can I truncate the last data point’s time to the start of the day / or ignore the last value? My query: from(bucket: "metric") |> range(start: -30d, stop: 0d) |> filter(fn: (r) => r["_measurement"] == "metric") |> filter(fn: (r) => r["_field"] == "value") |> filter(fn: (r) => r["metric"] == "SOME_METRIC") |> aggregateWindow(every: 1d, fn: median, createEmpty: true) |> yield(name: "median") I added the query results and the text explains my situation What I am trying to get is points as: (Lets say today is 17.02.2022); 15.02.2022 00:00:00:000 - 16.02.2022 00:00:00:000 - 17.02.2022 00:00:00:000 But I got 15.02.2022 00:00:00:000 - 16.02.2022 00:00:00:000 - 17.02.2022 00:00:00:000 - 17.02.2022 05:30:27:437 Thanks in advance.
Ok, I figured out that I must give exact dates instead of -d notation in the time range. from(bucket: "metric") |> range(start: 2022-01-16T00:00:00Z, stop: 2022-02-17T00:00:00Z) |> filter(fn: (r) => r["_measurement"] == "metric") |> filter(fn: (r) => r["_field"] == "value") |> filter(fn: (r) => r["metric"] == "SOME_METRIC") |> aggregateWindow(every: 1d, fn: median, createEmpty: true) |> yield(name: "median")
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Query delta between two days
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I couldnt find any solution with the regular influxdb query language. But by using flux instead there is a solution today = from(bucket: "piMeter") |> range(start: -31d) |> filter(fn: (r) => r._measurement == "downsampled_energy" and r._field == "sum_Gesamt") |> fill(value: 0.0) |> aggregateWindow(every: 1d, fn:sum) yesterday = from(bucket: "piMeter") |> range(start: -62d, stop: -31d) |> filter(fn: (r) => r._measurement == "downsampled_energy" and r._field == "sum_Gesamt") |> fill(value: 0.0) |> aggregateWindow(every: 1d, fn:sum) join(tables:{today:today, yesterday:yesterday}, on:["_field"]) |> map(fn:(r) => ({ _time: r._time_today, _value: r._value_today - r._value_yesterday, })) |> fill(value: 0.0) |> aggregateWindow(every:1d , fn:mean)