本文為英文版的機器翻譯版本,如內容有任何歧義或不一致之處,概以英文版為準。
具有彙總函數的查詢
以下是 IoT 案例範例資料集,以說明具有彙總函數的查詢。
範例資料
Timestream 可讓您存放和分析 IoT 感應器資料,例如一或多個卡車機群的位置、油耗、速度和負載容量,以實現有效的機群管理。以下是資料表 iot_trucks 的結構描述和部分資料,該資料表存放遙測,例如卡車的位置、油耗、速度和負載容量。
時間 | truck_id | Make | 模型 | 機群 | fuel_ capacity | load_ capacity | measure_name | measure_value::double | measure_value::varchar |
---|---|---|---|---|---|---|---|---|---|
2019-12-04 19:00:00.000000000 |
123456781 |
GMC |
Astro |
Alpha |
100 |
500 |
fuel_reading |
65.2 |
null |
2019-12-04 19:00:00.000000000 |
123456781 |
GMC |
Astro |
Alpha |
100 |
500 |
載入 |
400.0 |
null |
2019-12-04 19:00:00.000000000 |
123456781 |
GMC |
Astro |
Alpha |
100 |
500 |
speed |
90.2 |
null |
2019-12-04 19:00:00.000000000 |
123456781 |
GMC |
Astro |
Alpha |
100 |
500 |
location |
null |
47.6062 N,122.3321 W |
2019-12-04 19:00:00.000000000 |
123456782 |
肯沃思 |
W900 |
Alpha |
150 |
1000 |
fuel_reading |
10.1 |
null |
2019-12-04 19:00:00.000000000 |
123456782 |
肯沃思 |
W900 |
Alpha |
150 |
1000 |
載入 |
950.3 |
null |
2019-12-04 19:00:00.000000000 |
123456782 |
肯沃思 |
W900 |
Alpha |
150 |
1000 |
speed |
50.8 |
null |
2019-12-04 19:00:00.000000000 |
123456782 |
肯沃思 |
W900 |
Alpha |
150 |
1000 |
location |
null |
北緯 40.7128 度、西經 74.0060 度 |
查詢範例
取得機群中每輛卡車監控的所有感應器屬性和值清單。
SELECT truck_id, fleet, fuel_capacity, model, load_capacity, make, measure_name FROM "sampleDB".IoT GROUP BY truck_id, fleet, fuel_capacity, model, load_capacity, make, measure_name
取得過去 24 小時內機群中每輛卡車的最新燃料讀數。
WITH latest_recorded_time AS ( SELECT truck_id, max(time) as latest_time FROM "sampleDB".IoT WHERE measure_name = 'fuel-reading' AND time >= ago(24h) GROUP BY truck_id ) SELECT b.truck_id, b.fleet, b.make, b.model, b.time, b.measure_value::double as last_reported_fuel_reading FROM latest_recorded_time a INNER JOIN "sampleDB".IoT b ON a.truck_id = b.truck_id AND b.time = a.latest_time WHERE b.measure_name = 'fuel-reading' AND b.time > ago(24h) ORDER BY b.truck_id
識別過去 48 小時內以低燃料 (低於 10 %) 運作的卡車:
WITH low_fuel_trucks AS ( SELECT time, truck_id, fleet, make, model, (measure_value::double/cast(fuel_capacity as double)*100) AS fuel_pct FROM "sampleDB".IoT WHERE time >= ago(48h) AND (measure_value::double/cast(fuel_capacity as double)*100) < 10 AND measure_name = 'fuel-reading' ), other_trucks AS ( SELECT time, truck_id, (measure_value::double/cast(fuel_capacity as double)*100) as remaining_fuel FROM "sampleDB".IoT WHERE time >= ago(48h) AND truck_id IN (SELECT truck_id FROM low_fuel_trucks) AND (measure_value::double/cast(fuel_capacity as double)*100) >= 10 AND measure_name = 'fuel-reading' ), trucks_that_refuelled AS ( SELECT a.truck_id FROM low_fuel_trucks a JOIN other_trucks b ON a.truck_id = b.truck_id AND b.time >= a.time ) SELECT DISTINCT truck_id, fleet, make, model, fuel_pct FROM low_fuel_trucks WHERE truck_id NOT IN ( SELECT truck_id FROM trucks_that_refuelled )
尋找過去一週每輛卡車的平均負載和最大速度:
SELECT bin(time, 1d) as binned_time, fleet, truck_id, make, model, AVG( CASE WHEN measure_name = 'load' THEN measure_value::double ELSE NULL END ) AS avg_load_tons, MAX( CASE WHEN measure_name = 'speed' THEN measure_value::double ELSE NULL END ) AS max_speed_mph FROM "sampleDB".IoT WHERE time >= ago(7d) AND measure_name IN ('load', 'speed') GROUP BY fleet, truck_id, make, model, bin(time, 1d) ORDER BY truck_id
取得過去一週每輛卡車的負載效率:
WITH average_load_per_truck AS ( SELECT truck_id, avg(measure_value::double) AS avg_load FROM "sampleDB".IoT WHERE measure_name = 'load' AND time >= ago(7d) GROUP BY truck_id, fleet, load_capacity, make, model ), truck_load_efficiency AS ( SELECT a.truck_id, fleet, load_capacity, make, model, avg_load, measure_value::double, time, (measure_value::double*100)/avg_load as load_efficiency -- , approx_percentile(avg_load_pct, DOUBLE '0.9') FROM "sampleDB".IoT a JOIN average_load_per_truck b ON a.truck_id = b.truck_id WHERE a.measure_name = 'load' ) SELECT truck_id, time, load_efficiency FROM truck_load_efficiency ORDER BY truck_id, time