diff --git a/cycling_route_analysis_brouter.Rmd b/cycling_route_analysis_brouter.Rmd index da5407d..40e7283 100644 --- a/cycling_route_analysis_brouter.Rmd +++ b/cycling_route_analysis_brouter.Rmd @@ -178,17 +178,51 @@ Notes: for each segment in bike_lts, this counts how many student's calculated r ```{r routeslts, eval = FALSE, echo = TRUE, results = "show", warning = FALSE, error = TRUE, message = FALSE} getLTSForRoute <- function(i) { - lts_segments <- (bike_lts_buffer %>% filter(student_use > 0))$OBJECTID[st_intersects(bike_lts_buffer %>% filter(student_use > 0), routes %>% filter(student_number == i), sparse = FALSE)] - lts_max <- max(bike_lts_buffer %>% filter(OBJECTID %in% lts_segments) %>% pull(LTS_F), na.rm = TRUE) - lts_average <- mean(bike_lts_buffer %>% filter(OBJECTID %in% lts_segments) %>% pull(LTS_F), na.rm = TRUE) -# routes_lts[[as.character(i)]] <- data.frame("student_number" = c(as.character(i)), "lts_max" = c(lts_max), "lts_average" = c(lts_average)) - return(data.frame("student_number" = i, "lts_max" = lts_max, "lts_average" = lts_average)) - message(paste0("done - ", i, " of ", max(addresses_near$number))) + + # Filter the routes for the current student number + current_route <- routes %>% filter(student_number == i) + + # Find intersecting OBJECTIDs + intersecting_ids <- relevant_buffer$OBJECTID[lengths(st_intersects(relevant_buffer, current_route)) > 0] + + # Filter relevant segments to calculate max and average lts + relevant_segments <- bike_lts_buffer %>% filter(OBJECTID %in% intersecting_ids) + + # find all the segments of relevant_buffer that the current route passes through + current_route_lts_intersection <- st_intersection(current_route, relevant_segments) + + # calculate segment length in meters + current_route_lts_intersection$"segment_length" <- as.double(st_length(current_route_lts_intersection)) + + # Return the result as a data frame + result <- data.frame( + student_number = i + , lts_max = max(current_route_lts_intersection$LTS_F) + , lts_average = weighted.mean(current_route_lts_intersection$LTS_F, current_route_lts_intersection$segment_length) + , lts_1_dist = sum(current_route_lts_intersection %>% filter(LTS_F == 1) %>% pull(LTS_F)) + , lts_2_dist = sum(current_route_lts_intersection %>% filter(LTS_F == 2) %>% pull(LTS_F)) + , lts_3_dist = sum(current_route_lts_intersection %>% filter(LTS_F == 3) %>% pull(LTS_F)) + , lts_4_dist = sum(current_route_lts_intersection %>% filter(LTS_F == 4) %>% pull(LTS_F)) + , route = as.data.frame(current_route_lts_intersection) + ) + + # Optional message for debugging/progress + message(paste0("done - ", i)) + + return(result) } +# Start with routes_lts as a NULL list routes_lts <- list(NULL) -# routes_lts <- lapply(head(addresses_near %>% arrange(number) %>% pull(number)), -# getLTSForRoute) + +# Pre-filter the bike_lts_buffer for relevant student use +relevant_buffer <- bike_lts_buffer %>% filter(student_use > 0) + +routes_lts <- lapply(head(addresses_near %>% arrange(number) %>% pull(number)), + getLTSForRoute) + +system.time(routes_lts <- lapply(head(addresses_near %>% arrange(number) %>% pull(number)), + getLTSForRoute)) routes_lts <- mclapply(addresses_near %>% arrange(number) %>% pull(number), getLTSForRoute, @@ -207,6 +241,8 @@ routes_lts <- mclapply(addresses_near %>% arrange(number) %>% pull(number), routes_lts <- bind_rows(routes_lts) +ggmap(basemap) + geom_sf(data = routes_lts, inherit.aes = FALSE, aes(color = route.lts, geometry = routes_lts$route.geometry)) + addresses_near <- left_join(addresses_near, routes_lts, join_by("number"=="student_number")) ```