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Field Interpolation

A robust field interpolation is the prerequisite for pushing particles. This example demonstrates the construction of scalar/vector field interpolators for Cartesian/Spherical grids. If the field is analytic, you can directly pass the generated function to prepare.

julia
using TestParticle
using StaticArrays
using Chairmarks

function setup_spherical_field(ns = 16)
   r = logrange(0.1, 10.0, length = ns)
   r_uniform = range(0.1, 10.0, length = ns)
   θ = range(0, π, length = ns)
   ϕ = range(0, , length = ns)

   B₀ = 1e-8 # [nT]
   B = zeros(3, length(r), length(θ), length(ϕ)) # vector
   A = zeros(length(r), length(θ), length(ϕ)) # scalar

   for (iθ, θ_val) in enumerate(θ)
      sinθ, cosθ = sincos(θ_val)
      B[1, :, iθ, :] .= B₀ * cosθ
      B[2, :, iθ, :] .= -B₀ * sinθ
      A[:, iθ, :] .= B₀ * sinθ
   end

   B_field_nu = build_interpolator(StructuredGrid, B, r, θ, ϕ)
   A_field_nu = build_interpolator(StructuredGrid, A, r, θ, ϕ)
   B_field = build_interpolator(StructuredGrid, B, r_uniform, θ, ϕ)
   A_field = build_interpolator(StructuredGrid, A, r_uniform, θ, ϕ)

   return B_field_nu, A_field_nu, B_field, A_field
end

function setup_cartesian_field(ns = 16)
   x = range(-10, 10, length = ns)
   y = range(-10, 10, length = ns)
   z = range(-10, 10, length = ns)
   B = zeros(3, length(x), length(y), length(z)) # vector
   B[3, :, :, :] .= 10e-9
   A = zeros(length(x), length(y), length(z)) # scalar
   A[:, :, :] .= 10e-9

   B_field = build_interpolator(B, x, y, z)
   A_field = build_interpolator(A, x, y, z)

   return B_field, A_field
end

function setup_cartesian_nonuniform_field()
   x = logrange(0.1, 10.0, length = 16)
   y = range(-10, 10, length = 16)
   z = range(-10, 10, length = 16)
   B = zeros(3, length(x), length(y), length(z)) # vector
   B[3, :, :, :] .= 10e-9
   A = zeros(length(x), length(y), length(z)) # scalar
   A[:, :, :] .= 10e-9

   B_field = build_interpolator(RectilinearGrid, B, x, y, z)
   A_field = build_interpolator(RectilinearGrid, A, x, y, z)

   return B_field, A_field
end

function setup_time_dependent_field(ns = 16)
   x = range(-10, 10, length = ns)
   y = range(-10, 10, length = ns)
   z = range(-10, 10, length = ns)

   # Create two time snapshots
   B0 = zeros(3, length(x), length(y), length(z))
   B0[3, :, :, :] .= 1.0 # Bz = 1 at t=0

   B1 = zeros(3, length(x), length(y), length(z))
   B1[3, :, :, :] .= 2.0 # Bz = 2 at t=1

   times = [0.0, 1.0]

   function loader(i)
       if i == 1
           # For demonstration, we assume we load from disk here
           return build_interpolator(CartesianGrid, B0, x, y, z)
       elseif i == 2
           return build_interpolator(CartesianGrid, B1, x, y, z)
       else
           error("Index out of bounds")
       end
   end

   # B_field_t(x, t)
   B_field_t = LazyTimeInterpolator(times, loader)

   return B_field_t
end

function setup_mixed_precision_field(ns = 11, order = 1, bc = FillExtrap(NaN); coeffs = OnTheFly())
   x = range(0.0f0, 10.0f0, length = ns)
   y = range(0.0f0, 10.0f0, length = ns)
   z = range(0.0f0, 10.0f0, length = ns)
   B = fill(0.0f0, 3, ns, ns, ns)
   B[3, :, :, :] .= 1.0f-8

   itp = build_interpolator(B, x, y, z, order, bc; coeffs)
   return itp
end

B_sph_nu, A_sph_nu, B_sph, A_sph = setup_spherical_field();
B_car, A_car = setup_cartesian_field();
B_car_nu, A_car_nu = setup_cartesian_nonuniform_field();
B_td = setup_time_dependent_field();
itp_f32 = setup_mixed_precision_field();

loc = SA[1.0, 1.0, 1.0];
loc_f32 = SA[1.0f0, 1.0f0, 1.0f0];
loc_f64 = SA[1.0, 1.0, 1.0];
3-element StaticArraysCore.SVector{3, Float64} with indices SOneTo(3):
 1.0
 1.0
 1.0

Gridded spherical interpolation

Input Location

For spherical data, the input location is still in Cartesian coordinates!

julia
julia> @be B_sph_nu($loc)
Benchmark: 3117 samples with 209 evaluations
 min    138.675 ns (2 allocs: 64 bytes)
 median 140.833 ns (2 allocs: 64 bytes)
 mean   142.931 ns (2 allocs: 64 bytes)
 max    279.225 ns (2 allocs: 64 bytes)

julia> @be A_sph_nu($loc)
Benchmark: 3162 samples with 274 evaluations
 min    105.303 ns (2 allocs: 48 bytes)
 median 106.912 ns (2 allocs: 48 bytes)
 mean   108.207 ns (2 allocs: 48 bytes)
 max    247.708 ns (2 allocs: 48 bytes)

Uniform spherical interpolation

julia
julia> @be B_sph($loc)
Benchmark: 3132 samples with 208 evaluations
 min    139.058 ns (2 allocs: 64 bytes)
 median 141.269 ns (2 allocs: 64 bytes)
 mean   143.149 ns (2 allocs: 64 bytes)
 max    322.264 ns (2 allocs: 64 bytes)

julia> @be A_sph($loc)
Benchmark: 3033 samples with 266 evaluations
 min    107.906 ns (2 allocs: 48 bytes)
 median 116.492 ns (2 allocs: 48 bytes)
 mean   115.849 ns (2 allocs: 48 bytes)
 max    258.620 ns (2 allocs: 48 bytes)

Uniform Cartesian interpolation

julia
julia> @be B_car($loc)
Benchmark: 1541 samples with 466 evaluations
 min    61.315 ns (2 allocs: 64 bytes)
 median 90.824 ns (2 allocs: 64 bytes)
 mean   331.233 ns (2 allocs: 64 bytes, 0.06% gc time)
 max    381.855 μs (2 allocs: 64 bytes, 99.87% gc time)

julia> @be A_car($loc)
Benchmark: 3217 samples with 475 evaluations
 min    58.783 ns (2 allocs: 48 bytes)
 median 60.764 ns (2 allocs: 48 bytes)
 mean   61.516 ns (2 allocs: 48 bytes)
 max    101.436 ns (2 allocs: 48 bytes)

Non-uniform Cartesian interpolation

julia
julia> @be B_car_nu($loc)
Benchmark: 3166 samples with 479 evaluations
 min    58.355 ns (2 allocs: 64 bytes)
 median 60.823 ns (2 allocs: 64 bytes)
 mean   61.692 ns (2 allocs: 64 bytes)
 max    105.273 ns (2 allocs: 64 bytes)

julia> @be A_car_nu($loc)
Benchmark: 3206 samples with 487 evaluations
 min    57.725 ns (2 allocs: 48 bytes)
 median 59.721 ns (2 allocs: 48 bytes)
 mean   60.479 ns (2 allocs: 48 bytes)
 max    109.076 ns (2 allocs: 48 bytes)

Based on the benchmarks, for the same grid size, gridded interpolation (StructuredGrid with non-uniform ranges, RectilinearGrid) is 2x slower than uniform mesh interpolation (StructuredGrid with uniform ranges, CartesianGrid).

Mixed precision interpolation

Numerical field data from files is often stored in Float32. TestParticle supports constructing interpolators from Float32 data and ranges, which can then be queried with both Float32 and Float64 location vectors.

julia
julia> @be itp_f32($loc_f32)
Benchmark: 3215 samples with 517 evaluations
 min    54.530 ns (2 allocs: 64 bytes)
 median 55.830 ns (2 allocs: 64 bytes)
 mean   56.654 ns (2 allocs: 64 bytes)
 max    126.497 ns (2 allocs: 64 bytes)

julia> @be itp_f32($loc_f64)
Benchmark: 2375 samples with 459 evaluations
 min    61.880 ns (2 allocs: 64 bytes)
 median 91.444 ns (2 allocs: 64 bytes)
 mean   86.204 ns (2 allocs: 64 bytes)
 max    726.710 ns (2 allocs: 64 bytes)

Memory usage analysis

Large numerical field arrays can consume significant amounts of memory. It's important that interpolators are memory-efficient during both construction and storage.

For linear interpolation (order=1), construction is near zero-allocation because it creates a wrapper around a reinterpreted view of your existing array.

For higher-order interpolation (order = 3), FastInterpolations.jl provides two modes: OnTheFly() and PreCompute(). By default, OnTheFly() is used, which calculates interpolation coefficients during each query. This approach is memory-efficient as it does not require additional storage beyond the input data. Alternatively, PreCompute() precalculates and stores coefficients in an additional array of the same size, enabling faster O(1) lookup performance at the cost of higher memory usage.

We can measure this difference using @be.

julia
julia> # Order 1: Minimal allocations (Uses a view)
       @be setup_mixed_precision_field(11, 1)
Benchmark: 1 sample with 1 evaluation
        7.742 μs (8 allocs: 31.781 KiB)

julia> # Order 3: Minimal allocations (Uses a view)
       @be setup_mixed_precision_field(11, 3)
Benchmark: 1365 samples with 5 evaluations
 min    3.433 μs (14 allocs: 32.109 KiB)
 median 4.713 μs (14 allocs: 32.109 KiB)
 mean   14.303 μs (14 allocs: 32.109 KiB, 0.14% gc time)
 max    7.291 ms (14 allocs: 32.109 KiB, 97.32% gc time)

Comparing the ratios relative to the original array size illustrates the overhead:

julia
julia> B = fill(0.0f0, 3, 11, 11, 11);

julia> size_B = Base.summarysize(B) # Original 4D field array size
16036

julia> size_itp1 = Base.summarysize(itp_f32) # Total size for order=1 (Essentially the input array size)
16196

julia> itp_f32_q = setup_mixed_precision_field(11, 3) # Total size for order=3
(::TestParticle.FieldInterpolator{FastInterpolations.HeteroInterpolantND{Float32, StaticArraysCore.SVector{3, Float32}, 3, Tuple{FastInterpolations._CachedRange{Float32}, FastInterpolations._CachedRange{Float32}, FastInterpolations._CachedRange{Float32}}, Tuple{FastInterpolations.ScalarSpacing{Float32}, FastInterpolations.ScalarSpacing{Float32}, FastInterpolations.ScalarSpacing{Float32}}, Tuple{FastInterpolations.CardinalInterp{Float64}, FastInterpolations.CardinalInterp{Float64}, FastInterpolations.CardinalInterp{Float64}}, Tuple{FillExtrap{StaticArraysCore.SVector{3, Float32}}, FillExtrap{StaticArraysCore.SVector{3, Float32}}, FillExtrap{StaticArraysCore.SVector{3, Float32}}}, Tuple{FastInterpolations.AutoSearch, FastInterpolations.AutoSearch, FastInterpolations.AutoSearch}, Array{StaticArraysCore.SVector{3, Float32}, 3}}}) (generic function with 2 methods)

julia> size_itp3 = Base.summarysize(itp_f32_q)
16220

julia> # Ratios relative to raw data
       size_itp1 / size_B
1.0099775505113495

julia> size_itp3 / size_B
1.0114741830880518

As a rule of thumb, linear interpolation and cubic interpolation with OnTheFly() coefficients have nearly zero memory overhead (ratio ≈ 1.0), as they both operate directly on the input data. When supported, cubic interpolation with PreCompute() coefficients increases the memory footprint by 2DIM to store the extra coefficients, where DIM is the dimension of the field.

On-the-fly vs Precomputed coefficients

Cubic interpolation (order = 3) requires high-order coefficients. By default, TestParticle uses OnTheFly() coefficients, which are calculated at query time. This saves memory but increases evaluation time. For maximum performance, you can use PreCompute(), which stores the coefficients in an additional array.

Status in v0.4.8

Support for PreCompute() with local Hermite cubic interpolation is currently under development and not yet available in FastInterpolations.jl v0.4.8.

julia
julia> # Benchmark evaluation time
       itp_fly = setup_mixed_precision_field(11, 3; coeffs = OnTheFly());

julia> # itp_pre = setup_mixed_precision_field(11, 3; coeffs = PreCompute()); # Not yet supported in v0.4.8
       
       @be itp_fly($loc_f64)
Benchmark: 3261 samples with 46 evaluations
 min    624.630 ns (2 allocs: 64 bytes)
 median 639.652 ns (2 allocs: 64 bytes)
 mean   647.557 ns (2 allocs: 64 bytes)
 max    1.189 μs (2 allocs: 64 bytes)

julia> # Compare total object size
       Base.summarysize(itp_fly)
16220

As shown, OnTheFly() preserves memory efficiency while providing higher-order accuracy. Once available, PreCompute() will offer a faster alternative for memory-abundant systems.

Time-dependent field interpolation

For time-dependent fields, we can use LazyTimeInterpolator. It takes a list of time points and a loader function that returns a spatial interpolator for a given time index. The interpolator will linearly interpolate between the two nearest time points.

julia
julia> @be B_td($loc, 0.5)
Benchmark: 3117 samples with 145 evaluations
 min    197.469 ns (2 allocs: 64 bytes)
 median 203.614 ns (2 allocs: 64 bytes)
 mean   206.337 ns (2 allocs: 64 bytes)
 max    378.090 ns (2 allocs: 64 bytes)
TestParticle.build_interpolator Function
julia
build_interpolator(gridtype, A, grids..., order::Int=1, bc=FillExtrap(NaN))
build_interpolator(A, grids..., order::Int=1, bc=FillExtrap(NaN))

Return a function for interpolating field array A on the given grids.

Arguments

  • gridtype: CartesianGrid, RectilinearGrid or StructuredGrid. Usually determined by the number of grids.

  • A: field array. For vector field, the first dimension should be 3 if it's not an SVector wrapper.

  • order::Int=1: order of interpolation in [0,1,3].

  • bc=FillExtrap(NaN): boundary condition type from FastInterpolations.jl.

    • FillExtrap(NaN): Fill with NaN (default).

    • ClampExtrap(): Clamp (flat extrapolation).

    • WrapExtrap(): Exclusive periodic wrapping (L=NΔx).

  • coeffs=OnTheFly(): coefficient strategy for cubic interpolation (order=3). Default is OnTheFly().

Notes

  • The input array A may be modified in-place for memory optimization.
source
TestParticle.prepare Function
julia
prepare(args...; kwargs...) -> (q2m, m, E, B, F)
prepare(E, B, F = ZeroField(); kwargs...)
prepare(grid::CartesianGrid, E, B, F = ZeroField(); kwargs...)
prepare(x, E, B, F = ZeroField(); dir = 1, kwargs...)
prepare(x, y, E, B, F = ZeroField(); kwargs...)
prepare(x, y, z, E, B, F = ZeroField(); kwargs...)
prepare(B; E = ZeroField(), F = ZeroField(), kwargs...)

Return a tuple consists of particle charge-mass ratio for a prescribed species of charge q and mass m, mass m for a prescribed species, analytic/interpolated EM field functions, and external force F.

Prescribed species are Electron and Proton; other species can be manually specified with m and q keywords or species = Ion(m̄, q̄), where and are the mass and charge numbers respectively.

Direct range input for uniform grid in 1/2/3D is supported. The grid vectors must be sorted. For 1D grid, an additional keyword dir is used for specifying the spatial direction, 1 -> x, 2 -> y, 3 -> z. For 3D grid, the default grid type is CartesianGrid. To use StructuredGrid (spherical) grid, an additional keyword gridtype is needed. For StructuredGrid (spherical) grid, dimensions of field arrays should be (Br, Bθ, Bϕ).

Keywords

  • order::Int=1: order of interpolation in [0,1,3].

  • bc=FillExtrap(NaN): boundary condition type from FastInterpolations.jl.

  • species=Proton: particle species.

  • q=nothing: particle charge.

  • m=nothing: particle mass.

  • gridtype: CartesianGrid, RectilinearGrid, StructuredGrid.

source