h <- 0.005
graph$build_mesh(h=h)
edge_length = graph$get_edge_lengths() %>% as.vector()
PtE <- graph$mesh$VtE %>% as.data.frame() %>% rename(edge_number = V1, distance_on_edge = V2)
xy_vertex <- graph$V
xy_mesh <- graph$mesh$V %>% as.data.frame() %>% rename(x = X, y = Y)
fun1 = function(x) 100*exp(-((x/0.2)^2))/4
fun2 = function(x) 100*exp(-((x/0.16)^2))/3
fun3 = function(x) 100*exp(-((x/0.4)^2))/2
fun <- PtE %>%
mutate(
f = NA_real_, # start with NA
f = ifelse(edge_number %in% c(1,2,3,4,5,8,9,11,12,13,16,20,21,22,23,25), 0, f),
f = ifelse(edge_number == 10, fun1((distance_on_edge-0.41)*edge_length[10]), f),
f = ifelse(edge_number == 7, fun1((distance_on_edge-0.6)*edge_length[7]), f),
f = ifelse(edge_number == 14, fun2((distance_on_edge-0.5)*edge_length[14]), f),
f = ifelse(edge_number == 15, fun2((distance_on_edge-0.55)*edge_length[15]), f),
f = ifelse(edge_number == 18, fun3((distance_on_edge-0.5)*edge_length[18]), f),
f = ifelse(edge_number == 17, fun3(distance_on_edge*edge_length[17]+0.5*edge_length[18]), f),
f = ifelse(edge_number == 6, fun3(distance_on_edge*edge_length[6]-edge_length[6]-0.5*edge_length[18]), f),
f = ifelse(edge_number == 24, fun3(distance_on_edge*edge_length[24]+0.5*edge_length[18]), f),
f = ifelse(edge_number == 19, fun3(distance_on_edge*edge_length[19]-edge_length[19]-0.5*edge_length[18]), f)
)
x_range <- range(xy_vertex[,1])
y_range <- range(xy_vertex[,2])
z_range <- c(0, max(fun$f, na.rm = TRUE))
FUN_AUX <- fun
FUN_AUX$f_color <- (FUN_AUX$f / z_range[2])^0.3
all_data <- cbind(xy_mesh, fun)
on_vertex <- all_data %>%
slice((1:22))
all_data_no_vertex <- all_data %>%
slice(-(1:22))
# Split by edge_number
edge_groups <- split(all_data_no_vertex, all_data_no_vertex$edge_number)
# Function to create a single edge block
create_edge_block <- function(edge_index) {
start_v <- graph$E[edge_index, 1]
end_v <- graph$E[edge_index, 2]
# Get edge data (assuming edge_index corresponds to the same index in edge_groups)
edge_data <- edge_groups[[edge_index]]
# Create NA row matching the number of columns
na_row <- as.data.frame(matrix(NA, nrow = 1, ncol = ncol(on_vertex)))
colnames(na_row) <- colnames(on_vertex)
# Combine: start vertex, edge, end vertex, NA
rbind(on_vertex[start_v, ],
edge_data,
on_vertex[end_v, ],
na_row)
}
# Apply for all edges and combine
final_data <- do.call(rbind, lapply(seq_len(nrow(graph$E)), create_edge_block))
final_data$f_color <- (final_data$f / z_range[2])^0.3
on_vertex$f_color <- (on_vertex$f / z_range[2])^0.3
library(mapview)
library(sf)
on_vertex_sf <- st_as_sf(on_vertex,
coords = c("x", "y"),
crs = 4326) # adjust CRS if needed
p_spaguetti <- graph$plot_function(X= FUN_AUX$f_color,
type = "mapview",
mapview_caption = "Height",
line_width = 6)
rv <- 0.21
p_spaguetti3d <- plot_ly() %>%
add_trace(data = final_data,
x = ~x, y = ~y, z = ~f,
type = "scatter3d",
mode = "lines",
line = list(
color = ~f_color, # <-- nonlinear boost toward high values
colorscale = "Viridis", # choose any colorscale you like
cmin = 0,
cmax = 1,
width = 6),
showlegend = FALSE) %>%
add_trace(data = on_vertex,
x = ~x, y = ~y, z = ~f,
type = "scatter3d",
mode = "markers",
marker = list(
color = ~f_color, # <-- nonlinear boost toward high values
colorscale = "Viridis", # choose any colorscale you like
cmin = 0,
cmax = 1,
size = 4),
showlegend = FALSE) %>%
add_trace(x = rep(final_data$x, each = 3),
y = rep(final_data$y, each = 3),
z = unlist(lapply(final_data$f, function(zj) c(0, zj, NA))),
type = "scatter3d",
mode = "lines",
line = list(color = "gray", width = 0.5),
showlegend = FALSE) %>%
config(mathjax = 'cdn') %>%
layout(font = list(family = "Palatino"),
margin = list(l = 0, r = 0, b = 0, t = 0),
scene = list(xaxis = list(title = list(text = "Longitude", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = x_range),
yaxis = list(title = list(text = "Latitude", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = y_range),
zaxis = list(title = list(text = "", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = z_range),
aspectratio = list(x = 10, y = 10, z = 1),
camera = list(eye = list(y = -37.34*rv, x = 0*rv, z = 70*rv),
center = list(x = 0, y = 0, z = 0))
)
)
p_spaguetti2d <- plot_ly() %>%
add_trace(data = final_data,
x = ~x, y = ~y, z = ~f*0,
type = "scatter3d",
mode = "lines",
line = list(
color = ~f_color, # <-- nonlinear boost toward high values
colorscale = "Viridis", # choose any colorscale you like
cmin = 0,
cmax = 1,
width = 6),
showlegend = FALSE) %>%
add_trace(data = on_vertex,
x = ~x, y = ~y, z = ~f*0,
type = "scatter3d",
mode = "markers",
marker = list(
color = ~f_color, # <-- nonlinear boost toward high values
colorscale = "Viridis", # choose any colorscale you like
cmin = 0,
cmax = 1,
size = 4),
showlegend = FALSE) %>%
config(mathjax = 'cdn') %>%
layout(font = list(family = "Palatino"),
margin = list(l = 0, r = 0, b = 0, t = 0),
scene = list(xaxis = list(title = list(text = "Longitude", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = x_range),
yaxis = list(title = list(text = "Latitude", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = y_range),
zaxis = list(title = list(text = "", font = list(color = colaxnn)), tickfont = list(color = colaxnn), range = z_range),
aspectratio = list(x = 10, y = 10, z = 1),
camera = list(eye = list(y = -37.34*rv, x = 0*rv, z = 70*rv),
center = list(x = 0, y = 0, z = 0))
)
)
save(p_spaguetti, file = here::here("data_files/spaguetti.Rdata"))
save(p_spaguetti2d, file = here::here("data_files/spaguetti2d.Rdata"))
save(p_spaguetti3d, file = here::here("data_files/spaguetti3d.Rdata"))
References
grateful::cite_packages(output = "paragraph", out.dir = ".")
We used R version 4.5.2 (R Core Team
2025a) and the following R packages: cowplot v. 1.2.0 (Wilke 2025), ggmap v. 4.0.2 (Kahle and Wickham 2013), ggpubr v. 0.6.3 (Kassambara 2026), ggtext v. 0.1.2 (Wilke and Wiernik 2022), glue v. 1.8.0 (Hester and Bryan 2024), grid v. 4.5.2 (R Core Team 2025b), here v. 1.0.1 (Müller 2020), htmltools v. 0.5.8.1 (Cheng et al. 2024), INLA v. 25.11.22 (Rue, Martino, and Chopin 2009; Lindgren, Rue, and
Lindström 2011; Martins et al. 2013; Lindgren and Rue 2015; De Coninck
et al. 2016; Rue et al. 2017; Verbosio et al. 2017; Bakka et al. 2018;
Kourounis, Fuchs, and Schenk 2018), inlabru v. 2.13.0 (Yuan et al. 2017; Bachl et al. 2019), knitr v.
1.50 (Xie 2014, 2015, 2025), latex2exp v.
0.9.8 (Meschiari 2026), mapview v. 2.11.4
(Appelhans et al. 2025), Matrix v. 1.7.3
(Bates, Maechler, and Jagan 2025),
MetricGraph v. 1.5.0.9000 (Bolin, Simas, and
Wallin 2023a, 2023b, 2024, 2025; Bolin et al. 2024),
OpenStreetMap v. 0.4.1 (Fellows and Stotz
2025), patchwork v. 1.3.1 (Pedersen
2025), plotly v. 4.11.0 (Sievert
2020), plotrix v. 3.8.14 (J 2006),
pracma v. 2.4.4 (Borchers 2023), renv v.
1.1.7 (Ushey and Wickham 2026), reshape2
v. 1.4.4 (Wickham 2007), reticulate v.
1.44.1 (Ushey, Allaire, and Tang 2025),
rmarkdown v. 2.30 (Xie, Allaire, and Grolemund
2018; Xie, Dervieux, and Riederer 2020; Allaire et al. 2025),
rSPDE v. 2.5.2.9000 (Bolin and Kirchner 2020;
Bolin and Simas 2023; Bolin, Simas, and Xiong 2024), scales v.
1.4.0 (Wickham, Pedersen, and Seidel
2025), sf v. 1.1.0 (E. Pebesma 2018; E.
Pebesma and Bivand 2023), slackr v. 3.4.0 (Kaye et al. 2025), sp v. 2.2.1 (E. J. Pebesma and Bivand 2005; Bivand, Pebesma, and
Gomez-Rubio 2013), tidyverse v. 2.0.0 (Wickham et al. 2019), tikzDevice v. 0.12.6
(Sharpsteen and Bracken 2023), viridis v.
0.6.5 (Garnier et al. 2024), xaringanExtra
v. 0.8.0 (Aden-Buie and Warkentin
2024).
Allaire, JJ, Yihui Xie, Christophe Dervieux, Jonathan McPherson, Javier
Luraschi, Kevin Ushey, Aron Atkins, et al. 2025.
rmarkdown: Dynamic Documents for r.
https://github.com/rstudio/rmarkdown.
Appelhans, Tim, Florian Detsch, Christoph Reudenbach, and Stefan
Woellauer. 2025.
mapview: Interactive
Viewing of Spatial Data in r.
https://doi.org/10.32614/CRAN.package.mapview.
Bachl, Fabian E., Finn Lindgren, David L. Borchers, and Janine B.
Illian. 2019.
“inlabru: An
R Package for Bayesian Spatial Modelling from
Ecological Survey Data.” Methods in Ecology and
Evolution 10: 760–66.
https://doi.org/10.1111/2041-210X.13168.
Bakka, Haakon, Håvard Rue, Geir-Arne Fuglstad, Andrea I. Riebler, David
Bolin, Janine Illian, Elias Krainski, Daniel P. Simpson, and Finn K.
Lindgren. 2018.
“Spatial Modelling with INLA:
A Review.” WIRES (Invited Extended Review)
xx (Feb): xx–.
http://arxiv.org/abs/1802.06350.
Bates, Douglas, Martin Maechler, and Mikael Jagan. 2025.
Matrix: Sparse and Dense Matrix Classes and
Methods.
https://doi.org/10.32614/CRAN.package.Matrix.
Bivand, Roger S., Edzer Pebesma, and Virgilio Gomez-Rubio. 2013.
Applied Spatial Data Analysis with R, Second
Edition. Springer, NY.
https://asdar-book.org/.
Bolin, David, and Kristin Kirchner. 2020.
“The Rational
SPDE Approach for Gaussian Random Fields with
General Smoothness.” Journal of Computational and Graphical
Statistics 29 (2): 274–85.
https://doi.org/10.1080/10618600.2019.1665537.
Bolin, David, Mihály Kovács, Vivek Kumar, and Alexandre B. Simas. 2024.
“Regularity and Numerical Approximation of Fractional Elliptic
Differential Equations on Compact Metric Graphs.” Mathematics
of Computation 93 (349): 2439–72.
https://doi.org/10.1090/mcom/3929.
Bolin, David, and Alexandre B. Simas. 2023.
rSPDE: Rational Approximations of Fractional
Stochastic Partial Differential Equations.
https://CRAN.R-project.org/package=rSPDE.
Bolin, David, Alexandre B. Simas, and Jonas Wallin. 2023a.
MetricGraph: Random Fields on Metric Graphs.
https://CRAN.R-project.org/package=MetricGraph.
———. 2023b.
“Statistical Inference for Gaussian Whittle-Matérn
Fields on Metric Graphs.” arXiv Preprint
arXiv:2304.10372.
https://doi.org/10.48550/arXiv.2304.10372.
———. 2024.
“Gaussian Whittle-Matérn Fields on Metric
Graphs.” Bernoulli 30 (2): 1611–39.
https://doi.org/10.3150/23-BEJ1647.
———. 2025.
“Markov Properties of Gaussian Random Fields on Compact
Metric Graphs.” Bernoulli.
https://doi.org/10.48550/arXiv.2304.03190.
Bolin, David, Alexandre B. Simas, and Zhen Xiong. 2024.
“Covariance-Based Rational Approximations of Fractional SPDEs for
Computationally Efficient Bayesian Inference.” Journal of
Computational and Graphical Statistics 33 (1): 64–74.
https://doi.org/10.1080/10618600.2023.2231051.
Borchers, Hans W. 2023.
pracma:
Practical Numerical Math Functions.
https://doi.org/10.32614/CRAN.package.pracma.
De Coninck, Arne, Bernard De Baets, Drosos Kourounis, Fabio Verbosio,
Olaf Schenk, Steven Maenhout, and Jan Fostier. 2016.
“Needles: Toward Large-Scale Genomic Prediction with
Marker-by-Environment Interaction.” Genetics 203 (1):
543–55.
https://doi.org/10.1534/genetics.115.179887.
Fellows, Ian, and Jan-Peter Stotz. 2025.
OpenStreetMap:
Access to Open Street Map Raster Images.
https://doi.org/10.32614/CRAN.package.OpenStreetMap.
Garnier, Simon, Ross, Noam, Rudis, Robert, Camargo, et al. 2024.
viridis(Lite) - Colorblind-Friendly
Color Maps for r.
https://doi.org/10.5281/zenodo.4679423.
Hester, Jim, and Jennifer Bryan. 2024.
glue: Interpreted String Literals.
https://glue.tidyverse.org/.
J, Lemon. 2006. “Plotrix: A Package in the Red Light
District of r.” R-News 6 (4): 8–12.
Kahle, David, and Hadley Wickham. 2013.
“ggmap: Spatial Visualization with Ggplot2.”
The R Journal 5 (1): 144–61.
https://journal.r-project.org/archive/2013-1/kahle-wickham.pdf.
Kassambara, Alboukadel. 2026.
ggpubr:
“ggplot2” Based Publication
Ready Plots.
https://doi.org/10.32614/CRAN.package.ggpubr.
Kaye, Matt, Bob Rudis, Andrie de Vries, and Jonathan Sidi. 2025.
slackr: Send Messages, Images, r Objects
and Files to “Slack” Channels/Users.
https://github.com/mrkaye97/slackr.
Kourounis, D., A. Fuchs, and O. Schenk. 2018.
“Towards the Next
Generation of Multiperiod Optimal Power Flow Solvers.” IEEE
Transactions on Power Systems PP (99): 1–10.
https://doi.org/10.1109/TPWRS.2017.2789187.
Lindgren, Finn, and Håvard Rue. 2015.
“Bayesian Spatial Modelling
with R-INLA.” Journal of
Statistical Software 63 (19): 1–25.
http://www.jstatsoft.org/v63/i19/.
Lindgren, Finn, Håvard Rue, and Johan Lindström. 2011. “An
Explicit Link Between Gaussian Fields and
Gaussian Markov Random Fields: The Stochastic
Partial Differential Equation Approach (with Discussion).”
Journal of the Royal Statistical Society B 73 (4): 423–98.
Martins, Thiago G., Daniel Simpson, Finn Lindgren, and Håvard Rue. 2013.
“Bayesian Computing with INLA: New
Features.” Computational Statistics and Data Analysis
67: 68–83.
Meschiari, Stefano. 2026.
Latex2exp: Use LaTeX Expressions in
Plots.
https://doi.org/10.32614/CRAN.package.latex2exp.
Müller, Kirill. 2020.
here: A Simpler
Way to Find Your Files.
https://doi.org/10.32614/CRAN.package.here.
Pebesma, Edzer. 2018.
“Simple Features for R:
Standardized Support for Spatial Vector Data.”
The R Journal 10 (1): 439–46.
https://doi.org/10.32614/RJ-2018-009.
Pebesma, Edzer J., and Roger Bivand. 2005.
“Classes and Methods
for Spatial Data in R.” R News 5 (2): 9–13.
https://CRAN.R-project.org/doc/Rnews/.
Pebesma, Edzer, and Roger Bivand. 2023.
Spatial
Data Science: With applications in R.
Chapman and
Hall/CRC.
https://doi.org/10.1201/9780429459016.
Pedersen, Thomas Lin. 2025.
patchwork:
The Composer of Plots.
https://doi.org/10.32614/CRAN.package.patchwork.
R Core Team. 2025a.
R: A Language and Environment for
Statistical Computing. Vienna, Austria: R Foundation for
Statistical Computing.
https://www.R-project.org/.
———. 2025b.
R: A Language and Environment for
Statistical Computing. Vienna, Austria: R Foundation for
Statistical Computing.
https://www.R-project.org/.
Rue, Håvard, Sara Martino, and Nicholas Chopin. 2009. “Approximate
Bayesian Inference for Latent Gaussian Models
Using Integrated Nested Laplace Approximations (with
Discussion).” Journal of the Royal Statistical Society B
71: 319–92.
Rue, Håvard, Andrea I. Riebler, Sigrunn H. Sørbye, Janine B. Illian,
Daniel P. Simpson, and Finn K. Lindgren. 2017.
“Bayesian Computing
with INLA: A Review.” Annual
Reviews of Statistics and Its Applications 4 (March): 395–421.
http://arxiv.org/abs/1604.00860.
Sharpsteen, Charlie, and Cameron Bracken. 2023.
tikzDevice: R Graphics Output in LaTeX
Format.
https://doi.org/10.32614/CRAN.package.tikzDevice.
Sievert, Carson. 2020.
Interactive Web-Based Data Visualization with
r, Plotly, and Shiny. Chapman; Hall/CRC.
https://plotly-r.com.
Ushey, Kevin, JJ Allaire, and Yuan Tang. 2025.
reticulate: Interface to
“Python”.
https://doi.org/10.32614/CRAN.package.reticulate.
Ushey, Kevin, and Hadley Wickham. 2026.
renv: Project Environments.
https://doi.org/10.32614/CRAN.package.renv.
Verbosio, Fabio, Arne De Coninck, Drosos Kourounis, and Olaf Schenk.
2017.
“Enhancing the Scalability of Selected Inversion
Factorization Algorithms in Genomic Prediction.” Journal of
Computational Science 22 (Supplement C): 99–108.
https://doi.org/10.1016/j.jocs.2017.08.013.
Wickham, Hadley. 2007.
“Reshaping Data with the reshape Package.” Journal of
Statistical Software 21 (12): 1–20.
http://www.jstatsoft.org/v21/i12/.
Wickham, Hadley, Mara Averick, Jennifer Bryan, Winston Chang, Lucy
D’Agostino McGowan, Romain François, Garrett Grolemund, et al. 2019.
“Welcome to the tidyverse.”
Journal of Open Source Software 4 (43): 1686.
https://doi.org/10.21105/joss.01686.
Wickham, Hadley, Thomas Lin Pedersen, and Dana Seidel. 2025.
scales: Scale Functions for Visualization.
https://scales.r-lib.org.
Wilke, Claus O. 2025.
cowplot:
Streamlined Plot Theme and Plot Annotations for “ggplot2”.
https://doi.org/10.32614/CRAN.package.cowplot.
Wilke, Claus O., and Brenton M. Wiernik. 2022.
ggtext: Improved Text Rendering Support for
“ggplot2”.
https://doi.org/10.32614/CRAN.package.ggtext.
Xie, Yihui. 2014. “knitr: A
Comprehensive Tool for Reproducible Research in R.”
In Implementing Reproducible Computational Research, edited by
Victoria Stodden, Friedrich Leisch, and Roger D. Peng. Chapman;
Hall/CRC.
———. 2015.
Dynamic Documents with R and Knitr. 2nd
ed. Boca Raton, Florida: Chapman; Hall/CRC.
https://yihui.org/knitr/.
———. 2025.
knitr: A General-Purpose
Package for Dynamic Report Generation in R.
https://yihui.org/knitr/.
Xie, Yihui, J. J. Allaire, and Garrett Grolemund. 2018.
R Markdown:
The Definitive Guide. Boca Raton, Florida: Chapman; Hall/CRC.
https://bookdown.org/yihui/rmarkdown.
Xie, Yihui, Christophe Dervieux, and Emily Riederer. 2020.
R
Markdown Cookbook. Boca Raton, Florida: Chapman; Hall/CRC.
https://bookdown.org/yihui/rmarkdown-cookbook.
Yuan, Yuan, Bachl, Fabian E., Lindgren, Finn, Borchers, et al. 2017.
“Point Process Models for Spatio-Temporal Distance Sampling Data
from a Large-Scale Survey of Blue Whales.” Ann. Appl.
Stat. 11 (4): 2270–97.
https://doi.org/10.1214/17-AOAS1078.
---
title: "Arc-length parametrization 2"
date: "Last modified: `r format(Sys.time(), '%d-%m-%Y.')`"
output:
  html_document:
    mathjax: "https://cdn.jsdelivr.net/npm/mathjax@3/es5/tex-mml-chtml.js"
    highlight: pygments
    theme: flatly
    code_folding: hide # class.source = "fold-hide" to hide code and add a button to show it
    df_print: paged
    toc: true
    toc_float:
      collapsed: true
      smooth_scroll: true
    number_sections: true
    fig_caption: true
    code_download: true
    css: visual.css
always_allow_html: true
bibliography: 
  - references.bib
  - grateful-refs.bib
header-includes:
  - \newcommand{\ar}{\mathbb{R}}
  - \newcommand{\llav}[1]{\left\{#1\right\}}
  - \newcommand{\pare}[1]{\left(#1\right)}
  - \newcommand{\Ncal}{\mathcal{N}}
  - \newcommand{\Vcal}{\mathcal{V}}
  - \newcommand{\Ecal}{\mathcal{E}}
  - \newcommand{\Wcal}{\mathcal{W}}
  - \newcommand{\almosteverywhere}{\mathrm{a.e.}\;}
---

Go back to the [Contents](about.html) page.

<div style="color: #2c3e50; text-align: right;">
********  
<strong>Press Show to reveal the code chunks.</strong>  

********
</div>


```{r}
# Create a clipboard button on the rendeblack HTML page
source(here::here("clipboard.R")); clipboard
# Set seed for reproducibility
set.seed(1982) 
# Set global options for all code chunks
knitr::opts_chunk$set(
  # Disable messages printed by R code chunks
  message = FALSE,    
  # Disable warnings printed by R code chunks
  warning = FALSE,    
  # Show R code within code chunks in output
  echo = TRUE,        
  # Include both R code and its results in output
  include = TRUE,     
  # Evaluate R code chunks
  eval = FALSE,       
  # Enable caching of R code chunks for faster rendering
  cache = FALSE,      
  # Align figures in the center of the output
  fig.align = "center",
  # Enable retina display for high-resolution figures
  retina = 2,
  # Show errors in the output instead of stopping rendering
  error = TRUE,
  # Do not collapse code and output into a single block
  collapse = FALSE
)
# Start the figure counter
fig_count <- 0
# Define the captioner function
captioner <- function(caption) {
  fig_count <<- fig_count + 1
  paste0("Figure ", fig_count, ": ", caption)
}

```

```{r, eval = TRUE}
library(MetricGraph)
library(ggplot2)
library(reshape2)
library(dplyr)
library(viridis)
library(plotly)
library(patchwork)
library(slackr)
source("keys.R")
slackr_setup(token = token) # token comes from keys.R
```


```{r}
capture.output(
  knitr::purl(here::here("functionality1.Rmd"), output = here::here("functionality1.R")),
  file = here::here("old/purl_log.txt")
)
source(here::here("functionality1.R"))
```





```{r}
library(sf)
library(dplyr)



pems_edges <- pems_repl$edges



pems_edges_proj <- st_transform(pems_edges, 32610)  # UTM zone for this region

# 1. Define your box as an sf polygon
coordx_lwr1 <- -121.858
coordx_upr1 <- -121.84
coordy_lwr1 <- 37.315
coordy_upr1 <- 37.35

box_poly <- st_polygon(list(
  matrix(
    c(
      coordx_lwr1, coordy_lwr1,
      coordx_lwr1, coordy_upr1,
      coordx_upr1, coordy_upr1,
      coordx_upr1, coordy_lwr1,
      coordx_lwr1, coordy_lwr1
    ),
    ncol = 2,
    byrow = TRUE
  )
)) %>% st_sfc(crs = st_crs(pems_edges))

# 2. Clip the lines by the box
pems_clipped <- st_intersection(pems_edges, box_poly)

remove_ids <- c(1,7,8,14,18,22,23,34,35,36,42,43,47,50,51)

pems_clipped <- pems_clipped %>%
  dplyr::slice(-remove_ids)


graph <- metric_graph$new(edges = pems_clipped, longlat = TRUE)
graph$prune_vertices()



```



```{r}
h <- 0.005
graph$build_mesh(h=h)


edge_length = graph$get_edge_lengths() %>% as.vector()

PtE <- graph$mesh$VtE %>% as.data.frame() %>% rename(edge_number = V1, distance_on_edge = V2) 


xy_vertex <- graph$V
xy_mesh <- graph$mesh$V %>% as.data.frame() %>% rename(x = X, y = Y)

fun1 = function(x) 100*exp(-((x/0.2)^2))/4
fun2 = function(x) 100*exp(-((x/0.16)^2))/3
fun3 = function(x) 100*exp(-((x/0.4)^2))/2

fun <- PtE %>%
mutate(
    f = NA_real_,  # start with NA
    f = ifelse(edge_number %in% c(1,2,3,4,5,8,9,11,12,13,16,20,21,22,23,25), 0, f),
    f = ifelse(edge_number == 10, fun1((distance_on_edge-0.41)*edge_length[10]), f),
    f = ifelse(edge_number == 7, fun1((distance_on_edge-0.6)*edge_length[7]), f),
    f = ifelse(edge_number == 14, fun2((distance_on_edge-0.5)*edge_length[14]), f),
    f = ifelse(edge_number == 15, fun2((distance_on_edge-0.55)*edge_length[15]), f),
    f = ifelse(edge_number == 18, fun3((distance_on_edge-0.5)*edge_length[18]), f),
    f = ifelse(edge_number == 17, fun3(distance_on_edge*edge_length[17]+0.5*edge_length[18]), f),
    f = ifelse(edge_number == 6, fun3(distance_on_edge*edge_length[6]-edge_length[6]-0.5*edge_length[18]), f),
    f = ifelse(edge_number == 24, fun3(distance_on_edge*edge_length[24]+0.5*edge_length[18]), f),
    f = ifelse(edge_number == 19, fun3(distance_on_edge*edge_length[19]-edge_length[19]-0.5*edge_length[18]), f)
  )



x_range <- range(xy_vertex[,1])
y_range <- range(xy_vertex[,2])
z_range <- c(0, max(fun$f, na.rm = TRUE))


FUN_AUX <- fun
FUN_AUX$f_color <- (FUN_AUX$f / z_range[2])^0.3




all_data <- cbind(xy_mesh, fun)

on_vertex <- all_data %>%
  slice((1:22))
all_data_no_vertex <- all_data %>%
  slice(-(1:22))


# Split by edge_number
edge_groups <- split(all_data_no_vertex, all_data_no_vertex$edge_number)


# Function to create a single edge block
create_edge_block <- function(edge_index) {
  start_v <- graph$E[edge_index, 1]
  end_v   <- graph$E[edge_index, 2]
  
  # Get edge data (assuming edge_index corresponds to the same index in edge_groups)
  edge_data <- edge_groups[[edge_index]]
  
  # Create NA row matching the number of columns
  na_row <- as.data.frame(matrix(NA, nrow = 1, ncol = ncol(on_vertex)))
  colnames(na_row) <- colnames(on_vertex)
  
  # Combine: start vertex, edge, end vertex, NA
  rbind(on_vertex[start_v, ],
        edge_data,
        on_vertex[end_v, ],
        na_row)
}

# Apply for all edges and combine
final_data <- do.call(rbind, lapply(seq_len(nrow(graph$E)), create_edge_block))





final_data$f_color <- (final_data$f / z_range[2])^0.3

on_vertex$f_color <- (on_vertex$f / z_range[2])^0.3

library(mapview)
library(sf)

on_vertex_sf <- st_as_sf(on_vertex,
                         coords = c("x", "y"),
                         crs = 4326)  # adjust CRS if needed

p_spaguetti <- graph$plot_function(X= FUN_AUX$f_color,
                         type = "mapview",
                         mapview_caption = "Height",
                         line_width = 6) 


rv <- 0.21

p_spaguetti3d <- plot_ly() %>%
  add_trace(data = final_data, 
            x = ~x, y = ~y, z = ~f, 
            type = "scatter3d", 
            mode = "lines",
            line = list(
              color = ~f_color,   # <-- nonlinear boost toward high values               
              colorscale = "Viridis",     # choose any colorscale you like
              cmin = 0,
              cmax = 1,
              width = 6),
            showlegend = FALSE) %>%
  add_trace(data = on_vertex, 
            x = ~x, y = ~y, z = ~f, 
            type = "scatter3d", 
            mode = "markers",
            marker = list(
              color = ~f_color,   # <-- nonlinear boost toward high values               
              colorscale = "Viridis",     # choose any colorscale you like
              cmin = 0,
              cmax = 1,
              size = 4),
            showlegend = FALSE) %>%
    add_trace(x = rep(final_data$x, each = 3), 
            y = rep(final_data$y, each = 3), 
            z = unlist(lapply(final_data$f, function(zj) c(0, zj, NA))),
            type = "scatter3d", 
            mode = "lines",
            line = list(color = "gray", width = 0.5),
            showlegend = FALSE) %>%
  config(mathjax = 'cdn') %>%
layout(font = list(family = "Palatino"),
            margin = list(l = 0, r = 0, b = 0, t = 0),
            scene = list(xaxis = list(title = list(text = "Longitude", font = list(color = colaxnn)),  tickfont = list(color = colaxnn),  range = x_range),
              yaxis = list(title = list(text = "Latitude", font = list(color = colaxnn)),  tickfont = list(color = colaxnn), range = y_range),
              zaxis = list(title = list(text = "", font = list(color = colaxnn)),  tickfont = list(color = colaxnn), range = z_range),
    aspectratio = list(x = 10, y = 10, z = 1),
    camera = list(eye = list(y = -37.34*rv, x = 0*rv, z = 70*rv),
                            center = list(x = 0, y = 0, z = 0))
  )
)


p_spaguetti2d <- plot_ly() %>%
  add_trace(data = final_data, 
            x = ~x, y = ~y, z = ~f*0, 
            type = "scatter3d", 
            mode = "lines",
            line = list(
              color = ~f_color,   # <-- nonlinear boost toward high values               
              colorscale = "Viridis",     # choose any colorscale you like
              cmin = 0,
              cmax = 1,
              width = 6),
            showlegend = FALSE) %>%
  add_trace(data = on_vertex, 
            x = ~x, y = ~y, z = ~f*0, 
            type = "scatter3d", 
            mode = "markers",
            marker = list(
              color = ~f_color,   # <-- nonlinear boost toward high values               
              colorscale = "Viridis",     # choose any colorscale you like
              cmin = 0,
              cmax = 1,
              size = 4),
            showlegend = FALSE) %>%
  config(mathjax = 'cdn') %>%
layout(font = list(family = "Palatino"),
            margin = list(l = 0, r = 0, b = 0, t = 0),
            scene = list(xaxis = list(title = list(text = "Longitude", font = list(color = colaxnn)),  tickfont = list(color = colaxnn),  range = x_range),
              yaxis = list(title = list(text = "Latitude", font = list(color = colaxnn)),  tickfont = list(color = colaxnn), range = y_range),
              zaxis = list(title = list(text = "", font = list(color = colaxnn)),  tickfont = list(color = colaxnn), range = z_range),
    aspectratio = list(x = 10, y = 10, z = 1),
    camera = list(eye = list(y = -37.34*rv, x = 0*rv, z = 70*rv),
                            center = list(x = 0, y = 0, z = 0))
  )
)

save(p_spaguetti, file = here::here("data_files/spaguetti.Rdata"))
save(p_spaguetti2d, file = here::here("data_files/spaguetti2d.Rdata"))
save(p_spaguetti3d, file = here::here("data_files/spaguetti3d.Rdata"))

```




:::: {style="display: grid; grid-template-columns: 645px 645px 645px; grid-column-gap: 0px;"}


::: {}


```{r, eval =TRUE, fig.height = 7, out.width = "100%"}
load(here::here("data_files/spaguetti3d.Rdata"))
p_spaguetti3d
```


:::

::: {}



```{r, eval =TRUE, fig.height = 7, out.width = "100%"}
load(here::here("data_files/spaguetti2d.Rdata"))
p_spaguetti2d
```


:::

::: {}


```{r, eval =TRUE, fig.height = 7, out.width = "100%"}
load(here::here("data_files/spaguetti.Rdata"))
p_spaguetti
```


:::


::::








































# References

```{r, eval = TRUE}
grateful::cite_packages(output = "paragraph", out.dir = ".")
```
