forked from gsn/predictor
195 lines
5.6 KiB
Go
195 lines
5.6 KiB
Go
package main
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import (
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"context"
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"encoding/json"
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"fmt"
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"io"
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"math"
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"net/http"
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"os"
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"time"
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"predictor-refactored/internal/dataset"
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"predictor-refactored/internal/downloader"
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"predictor-refactored/internal/prediction"
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"go.uber.org/zap"
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)
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// Downloads a few forecast steps and runs a prediction, then compares
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// against the public Tawhiri API.
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func main() {
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log, _ := zap.NewDevelopment()
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cfg := &downloader.Config{
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DataDir: os.TempDir(),
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Parallel: 4,
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}
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dl := downloader.NewDownloader(cfg, log)
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ctx := context.Background()
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// Find latest run
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run, err := dl.FindLatestRun(ctx)
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if err != nil {
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fmt.Fprintf(os.Stderr, "FindLatestRun: %v\n", err)
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os.Exit(1)
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}
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fmt.Printf("Using run: %s\n", run.Format("2006010215"))
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// Create dataset and download first 10 steps (0-27 hours, enough for a prediction)
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dsPath := fmt.Sprintf("/tmp/pred_test_%s.bin", run.Format("2006010215"))
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defer os.Remove(dsPath)
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ds, err := dataset.Create(dsPath)
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if err != nil {
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fmt.Fprintf(os.Stderr, "Create: %v\n", err)
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os.Exit(1)
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}
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date := run.Format("20060102")
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runHour := run.Hour()
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stepsToDownload := []int{0, 3, 6, 9, 12, 15, 18, 21, 24, 27}
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fmt.Printf("Downloading %d steps...\n", len(stepsToDownload))
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for _, step := range stepsToDownload {
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hourIdx := dataset.HourIndex(step)
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fmt.Printf(" step %d (hour idx %d)...\n", step, hourIdx)
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urlA := dataset.GribURL(date, runHour, step)
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if err := dl.DownloadAndBlit(ctx, ds, urlA, hourIdx, dataset.LevelSetA); err != nil {
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fmt.Fprintf(os.Stderr, " pgrb2 step %d: %v\n", step, err)
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os.Exit(1)
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}
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urlB := dataset.GribURLB(date, runHour, step)
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if err := dl.DownloadAndBlit(ctx, ds, urlB, hourIdx, dataset.LevelSetB); err != nil {
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fmt.Fprintf(os.Stderr, " pgrb2b step %d: %v\n", step, err)
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os.Exit(1)
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}
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}
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ds.Flush()
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fmt.Println("Download complete")
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// Set dataset time
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ds.DSTime = run
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// Run our prediction
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launchLat := 52.2135
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launchLon := 0.0964 // already in [0, 360)
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launchAlt := 0.0
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ascentRate := 5.0
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burstAlt := 30000.0
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descentRate := 5.0
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// Launch 3 hours into the forecast
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launchTime := run.Add(3 * time.Hour)
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launchTimestamp := float64(launchTime.Unix())
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dsEpoch := float64(run.Unix())
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warnings := &prediction.Warnings{}
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stages := prediction.StandardProfile(ascentRate, burstAlt, descentRate, ds, dsEpoch, warnings, nil)
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results := prediction.RunPrediction(launchTimestamp, launchLat, launchLon, launchAlt, stages)
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fmt.Printf("\n=== Our prediction ===\n")
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for i, sr := range results {
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stage := "ascent"
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if i == 1 {
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stage = "descent"
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}
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first := sr.Points[0]
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last := sr.Points[len(sr.Points)-1]
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fmt.Printf(" %s: %d points, start=(%.4f, %.4f, %.0fm) end=(%.4f, %.4f, %.0fm)\n",
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stage, len(sr.Points),
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first.Lat, first.Lng, first.Alt,
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last.Lat, last.Lng, last.Alt)
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}
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// Get landing point
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var ourLandLat, ourLandLon float64
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if len(results) >= 2 {
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last := results[1].Points[len(results[1].Points)-1]
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ourLandLat = last.Lat
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ourLandLon = last.Lng
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if ourLandLon > 180 {
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ourLandLon -= 360
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}
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}
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fmt.Printf(" Landing: lat=%.4f, lon=%.4f\n", ourLandLat, ourLandLon)
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// Compare against public Tawhiri API
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fmt.Printf("\n=== Tawhiri API comparison ===\n")
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tawhiriLandLat, tawhiriLandLon, err := queryTawhiri(launchLat, launchLon, launchAlt, launchTime, ascentRate, burstAlt, descentRate)
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if err != nil {
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fmt.Printf(" Tawhiri API error: %v\n", err)
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fmt.Println(" (Cannot compare — Tawhiri may use a different dataset)")
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ds.Close()
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return
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}
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fmt.Printf(" Tawhiri landing: lat=%.4f, lon=%.4f\n", tawhiriLandLat, tawhiriLandLon)
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dist := haversine(ourLandLat, ourLandLon, tawhiriLandLat, tawhiriLandLon)
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fmt.Printf(" Distance between landing points: %.2f km\n", dist/1000)
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if dist < 1000 {
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fmt.Println(" CLOSE MATCH (< 1 km)")
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} else if dist < 50000 {
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fmt.Printf(" MODERATE DIFFERENCE (%.1f km) — likely different datasets\n", dist/1000)
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} else {
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fmt.Printf(" LARGE DIFFERENCE (%.1f km) — possible bug\n", dist/1000)
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}
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ds.Close()
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}
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func queryTawhiri(lat, lon, alt float64, launchTime time.Time, ascentRate, burstAlt, descentRate float64) (landLat, landLon float64, err error) {
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url := fmt.Sprintf(
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"https://api.v2.sondehub.org/tawhiri?launch_latitude=%.4f&launch_longitude=%.4f&launch_altitude=%.0f&launch_datetime=%s&ascent_rate=%.1f&burst_altitude=%.0f&descent_rate=%.1f",
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lat, lon, alt, launchTime.Format(time.RFC3339), ascentRate, burstAlt, descentRate)
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resp, err := http.Get(url)
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if err != nil {
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return 0, 0, err
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}
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defer resp.Body.Close()
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body, _ := io.ReadAll(resp.Body)
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if resp.StatusCode != 200 {
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return 0, 0, fmt.Errorf("HTTP %d: %s", resp.StatusCode, string(body))
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}
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var result struct {
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Prediction []struct {
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Stage string `json:"stage"`
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Trajectory []struct {
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Latitude float64 `json:"latitude"`
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Longitude float64 `json:"longitude"`
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Altitude float64 `json:"altitude"`
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} `json:"trajectory"`
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} `json:"prediction"`
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}
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if err := json.Unmarshal(body, &result); err != nil {
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return 0, 0, err
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}
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for _, stage := range result.Prediction {
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if stage.Stage == "descent" && len(stage.Trajectory) > 0 {
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last := stage.Trajectory[len(stage.Trajectory)-1]
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return last.Latitude, last.Longitude, nil
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}
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}
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return 0, 0, fmt.Errorf("no descent stage found")
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}
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func haversine(lat1, lon1, lat2, lon2 float64) float64 {
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const R = 6371000.0
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phi1 := lat1 * math.Pi / 180
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phi2 := lat2 * math.Pi / 180
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dphi := (lat2 - lat1) * math.Pi / 180
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dlam := (lon2 - lon1) * math.Pi / 180
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a := math.Sin(dphi/2)*math.Sin(dphi/2) + math.Cos(phi1)*math.Cos(phi2)*math.Sin(dlam/2)*math.Sin(dlam/2)
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return R * 2 * math.Atan2(math.Sqrt(a), math.Sqrt(1-a))
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}
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