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Buffon’s problem determines Gaussian curvature in three geometries

Published online by Cambridge University Press:  08 April 2024

Aizelle Abelgas*
Affiliation:
University of California, Riverside
Bryan Carrillo*
Affiliation:
Saddleback College
John Palacios*
Affiliation:
University of California, Irvine
David Weisbart*
Affiliation:
University of California, Riverside
Adam M. Yassine*
Affiliation:
Pomona College
*
*Postal address: Department of Mathematics, 900 University Ave., Riverside, CA 92521, Skye Hall.
***Postal address: Saddleback College, Department of Mathematics, 28000 Marguerite Parkway, Mission Viejo, California 92692. Email: bcarrillo@saddleback.edu
****Center for Complex Biological Systems, University of California, Irvine, 2620 Biological Sciences III, Irvine, CA 92697-2280. Email address:jjpalac2@uci.edu
*Postal address: Department of Mathematics, 900 University Ave., Riverside, CA 92521, Skye Hall.
******Postal address: Pomona College, Department of Mathematics and Statistics, 610 N. College Avenue, Claremont, CA 91711. Email: adam.yassine@pomona.edu
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Abstract

A version of the classical Buffon problem in the plane naturally extends to the setting of any Riemannian surface with constant Gaussian curvature. The Buffon probability determines a Buffon deficit. The relationship between Gaussian curvature and the Buffon deficit is similar to the relationship that the Bertrand–Diguet–Puiseux theorem establishes between Gaussian curvature and both circumference and area deficits.

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of Applied Probability Trust

1. Introduction

Buffon’s problem has attracted considerable interest and invited many generalizations and analogues following its introduction [Reference Buffon3, Reference Buffon4]. An analogue of this problem in the planar setting with the ‘needle’ replaced by a ‘noodle’, a rigid rectifiable plane curve, was studied in [Reference Barbier1]. The problem was studied in [Reference Diaconis6] in the setting of a long needle; the moments of the random variable that counts the number of intersections were estimated, and an applied motivation for this problem in detection deployment was discussed. The extensive treatment and review of the problem in [Reference Solomon12] presents many of its generalizations. The problem was treated in the planar setting by relating it to the Crofton formula in [Reference Klain and Rota9], while [Reference Peter and Tanasi11] and [Reference Isokawa8] studied analogues of Buffon’s problem on the sphere, the former with gratings formed by lines of longitude, and the latter with gratings formed by lines of latitude.

The Crofton formula is closely related to Buffon’s problem, and the literature on the development and application of this formula in the study of differential geometry is vast. An engaging starting point for a reader who is interested in further study is [Reference Calegari5]. Buffon’s problem may be extended to the setting of certain planar fractals, and [Reference Falconer7, Theorem 6.13] implies that the intersection of a dropped needle with a fractal that belongs to a certain large class of planar fractals is a zero-probability event [Reference Peres and Solomyak10]. The Favard length of a subset E of the unit square is proportional to the probability that a needle dropped in the square intersects E. It appears that [Reference Peres and Solomyak10] was the first study of the problem of estimating the decay of the Favard length for a class of self-similar sets that includes $K^2$ , the Cartesian product of the middle half-Cantor set K with itself. Although a survey of the literature is beyond the scope of this work, it is important for perspective to at least recognize some appearances of ideas that are related to Buffon’s problem in both the fractal and differential geometric settings.

It seems worthwhile to explore a connection between Buffon’s problem and Gaussian curvature that utilizes only elementary prerequisite knowledge. Take M to be any Riemannian surface with constant Gaussian curvature and denote by $\kappa(M)$ the Gaussian curvature of M. Section 2 describes a procedure for dropping a geodesic needle of length 2L on M and defines a Bernoulli random variable I(X) that takes on the value 1 if the needle intersects a certain grating in M with spacing 2L. The Buffon probability is the probability $\mathbb{P}(I(X)=1)$ . The principal novelty of this paper is the introduction of the notion of a Buffon deficit together with Theorem 1.1, which establishes a probabilistic characterization of Gaussian curvature.

Definition 1.1. The Buffon deficit for M for a needle of length 2L is the difference

\begin{align*}\frac{2}{\pi} - \mathbb{P}(I(X)=1).\end{align*}

Theorem 1.1. For any Riemannian surface M with constant Gaussian curvature,

\begin{align*}\lim_{L\to 0^+}\frac{9\pi}{2}\frac{\mathbb{P}(I(X)=1) - {2}/{\pi}}{L^2} = \kappa(M).\end{align*}

Corollary 1.1. For any Riemannian surface M with constant Gaussian curvature,

\begin{align*}\lim_{L\to 0^+} \mathbb{P}(I(X)=1) = \frac{2}{\pi}.\end{align*}

The relationship between Buffon deficits and Gaussian curvature that Theorem 1.1 establishes is similar to the relationship that the Bertrand–Diguet–Puiseux theorem [Reference Bertrand, Diguet and Puiseux2] establishes for circumference and area deficits more generally for any Riemannian surface.

2. A general framework

2.1. Isometries and gratings

Any Riemannian surface with constant Gaussian curvature is isometric to one of these surfaces: the plane, $\mathbb R^2$ ; the sphere of radius r, $\mathbb{S}_r$ ; or, for any positive real number k, the Poincaré disk with its usual metric scaled by a factor of $k^2$ , $\mathbb{H}_k$ . Take M to be any one of these surfaces. The group $\mathcal{G}$ of isometries of M acts transitively on M. For any g in $\mathcal{G}$ and x in M, denote by gx the result of applying the transformation g to the point x. For any subset S of M, denote by gS the set $gS = \{gs\,:\, s\in S\}$ . Henceforth, take L to be any positive real number if M is $\mathbb R^2$ or $\mathbb H_k$ , and if M is $\mathbb S_r$ , take L to be equal to ${\pi r}/{2n}$ for any natural number n that is greater than 1.

Definition 2.1. An equator for M is a directed geodesic in M. A grating line for an equator $\mathcal{E}$ is a geodesic that intersects $\mathcal{E}$ at a right angle. A grating G(L) for M with equator $\mathcal{E}$ and spacing 2L is a set of grating lines for $\mathcal{E}$ such that $G(L) \cap \mathcal{E}$ is an evenly spaced set of points with the smallest spacing equal to 2L.

Take $\mathcal{G}^\prime$ to be the maximal nontrivial subgroup of $\mathcal{G}$ that preserves $\mathcal{E}$ , the direction of $\mathcal{E}$ , and acts transitively on $\mathcal{E}$ . There is an $h_0$ in $\mathcal{G}^\prime$ that moves points in $\mathcal{E}$ in the positive direction along $\mathcal{E}$ and that generates the subgroup $\mathcal{H}$ of $\mathcal{G}^\prime$ that both preserves and acts transitively on $G(L)\cap \mathcal{E}$ . For any g in $\mathcal{G}^\prime$ , denote by $\alpha_g$ the signed distance that g moves points along $\mathcal{E}$ . The displacement function, $\alpha$ , takes each g in $\mathcal{G}^\prime$ to $\alpha_g$ . In the case of $\mathbb S_r$ , the range of $\alpha$ is $\mathbb R\,(\mathrm{mod}\,2\pi r)$ . The displacement function is a homomorphism that orders the elements of $\mathcal{G}^\prime$ . Furthermore, for any g in $\mathcal{G}^\prime$ , $\alpha_{g^{-1}} = -\alpha_g$ and $\alpha_{h_0} = 2L$ .

Proposition 2.1. For any M, any two equators $\mathcal{E}_1$ and $\mathcal{E}_2$ in M, and any two gratings $G_1(L)$ and $G_2(L)$ with common spacing 2L and respective equators $\mathcal{E}_1$ and $\mathcal{E}_2$ , there is a g in $\mathcal{G}$ such that $g\mathcal{E}_1 = \mathcal{E}_2$ and $gG_1(L) = G_2(L)$ .

2.2. Dropping the needle

For each of the three types of surface, view a needle as a directed segment of length 2L of a geodesic. Take X to be the random variable that is uniformly distributed in $[-L, L]$ . For any real number z in the case when M is $\mathbb R^2$ or $\mathbb H_k$ , or for any z in $\mathbb R\,(\mathrm{mod}\,2\pi r)$ in the case when M is $\mathbb S_r$ , and for any x in $\mathcal{E}$ , denote by $p_x(z)$ the unique point in $\mathcal{E}$ that is a signed distance of z from x (Figure 1).

Figure 1: Intersection of the needle with the grating.

The tip of the needle with center $p_x(z)$ is a marked endpoint of the needle and its position is uniformly randomly distributed on the geodesic circle $C_x(z)$ of radius L and center $p_x(z)$ . The geodesic circle $C_x(z)$ intersects either one grating line at two distinct points or two distinct grating lines at one point each. In the case when $C_x(z)$ intersects a geodesic in G(L) at two points, the intersection defines two arcs of $C_x(z)$ . Denote by $\Lambda_x(z)$ the arc length of the smaller of the two arcs. If the geodesic circle $C_x(z)$ intersects two grating lines at exactly one point each, then define $\Lambda_x(z)$ to be 0. If $C_x(z)$ intersects a grating line in such a way that the intersection divides $C_x(z)$ into two arcs of equal length, then take $\Lambda_x(z)$ to be half the circumference of $C_x(z)$ .

Denote by $\mathrm{Circ}(L)$ the circumference of a geodesic circle of radius L. Denote by $I_x(X)$ the random variable that is 1 if a needle with midpoint $p_x(X)$ intersects G(L) and 0 otherwise. A needle that intersects a grating line will still intersect the same grating line at the same point when the needle is rotated by half of a circle, hence

\begin{equation*} \mathbb{P}(I_x(X)=1\mid X=z) = \frac{2\Lambda_x(z)}{\mathrm{Circ}(L)}.\end{equation*}

The law of total probability implies that

(2.1) \begin{equation} \mathbb{P}(I_x(X)=1) = \frac{1}{L}\int_{-L}^{L} \frac{\Lambda_x(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z.\end{equation}

2.3. Consequences of homogeneity

The goal of this subsection is to show that the probability of intersection of a dropped needle is independent of the choices of $\mathcal{E}$ , G(L), and x. To see this, take $x_0$ to be any element of $G(L)\cap\mathcal{E}$ .

Proposition 2.2. For any g in $\mathcal{G}^\prime$ , $\mathbb{P}(I_{g x_0}(X) = 1) = \mathbb{P}(I_{x_0}(X) = 1)$ .

Proof. Since any h in $\mathcal{H}$ preserves intersections, arc lengths, and the grating G(L),

(2.2) \begin{equation} \Lambda_{hx_0}(z) = \Lambda_{x_0}(z). \end{equation}

This invariance under h together with (2.1) implies that

(2.3) \begin{equation} \mathbb{P}(I_{hx_0}(X)=1) = \mathbb{P}(I_{x_0}(X)=1). \end{equation}

For any z in $[-L, L]$ , (2.1) together with the equality

(2.4) \begin{equation} \Lambda_{gx_0}(z) = \Lambda_{x_0}(z + \alpha_g) \end{equation}

and a change of variables implies that

\begin{equation*} \mathbb{P}(I_{gx_0}(X)=1) = \frac{1}{L}\int_{-L+\alpha_{g}}^{L+\alpha_g} \frac{\Lambda_{x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z. \end{equation*}

If $\alpha_{g}$ is in [0, L], then

\begin{equation*} \mathbb{P}(I_{gx_0}(X)=1) = \frac{1}{L}\int_{-L+\alpha_{g}}^{L}\frac{\Lambda_{x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z + \frac{1}{L}\int_{L}^{L+\alpha_{g}}\frac{\Lambda_{x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z. \end{equation*}

A change of variables together with (2.2) and (2.4) implies that

\begin{align*} \frac{1}{L}\int_{L}^{L+\alpha_{g}}\frac{\Lambda_{x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z = \frac{1}{L}\int_{L}^{L+\alpha_{g}}\frac{\Lambda_{h^{-1}_0x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z = \frac{1}{L}\int_{L-2L}^{L+\alpha_{g}-2L} \frac{\Lambda_{x_0}(z)}{\mathrm{Circ}(L)}\,\mathrm{d}z, \end{align*}

and so

(2.5) \begin{equation} \mathbb{P}(I_{gx_0}(X)=1) = \mathbb{P}(I_{x_0}(X)=1). \end{equation}

For any g in $\mathcal{G}^\prime$ , there is an h in $\mathcal{H}$ and a $g^\prime$ in $\mathcal{G}^\prime$ such that $\alpha_{g^\prime}$ is in [0, L] and

(2.6) \begin{equation} hg^\prime = g. \end{equation}

Associativity of the group action together with (2.3), (2.5), and (2.6) extends (2.5) to all g in $\mathcal{G}^\prime$ .

For any grating $G_1(L)$ , denote by $\mathcal{E}_1$ the equator for $G_1(L)$ . Any $x_1$ in $\mathcal{E}_1$ is the center of a unique segment of $\mathcal{E}_1$ of length 2L. Take ${\mathbb P}_1(I_{x_1}(X) = 1)$ to be the probability that a dropped needle of length 2L intersects $G_1(L)$ , where the center of the needle is in the segment of $\mathcal{E}_1$ that $x_1$ defines, and is uniformly randomly distributed with respect to arc length on that segment.

Theorem 2.1. For any grating $G_1(L)$ and any $x_1$ in $\mathcal{E}_1$ , ${\mathbb P}_1(I_{x_1}(X)=1) = \mathbb{P}(I_{x_0}(X) = 1)$ .

Proof. Proposition 2.1 guarantees that there is a $g_1$ in $\mathcal{G}$ that takes ${\mathcal{E}}_1$ to ${\mathcal{E}}$ and $G_1(L)$ to G(L). Isometries preserve intersections and the lengths of arcs, so

\begin{align*}{\mathbb P}_1(I_{x_1}(X) = 1) = \mathbb{P}(I_{g_1x_1}(X)=1).\end{align*}

Since $g_1x_1$ is in $\mathcal{E}$ , there is a $g^\prime_1$ in $\mathcal{G}^\prime$ such that $g^\prime_1 x_0$ is equal to $g_1x_1$ , and so Proposition 2.2 implies the desired equality.

3. Determination of the Buffon probabilities

3.1. The needle in the plane

Rotations around the origin, reflection across the y-axis, and translations generate $\mathcal{G}$ , the isometry group of the plane. The geodesics are the straight lines, and the circumference of any circle of radius L is equal to $2\pi L$ . Take the equator $\mathcal{E}$ , the subgroup $\mathcal{G}^\prime$ of $\mathcal{G}$ , and the subgroup $\mathcal{H}$ of $\mathcal{G}^\prime$ to be, respectively, the positively oriented x-axis, the group of translations that fix the x-axis, and the group that is generated by the vector $\langle 2L, 0\rangle$ . The set of translates of the y-axis by $\mathcal{H}$ is the grating G(L).

We compress the notation by writing $\Lambda(z)$ instead of $\Lambda_{(0,0)}(z)$ and I(X) instead of $I_{(0,0)}(X)$ . Since reflection across the y-axis is an isometry,

\begin{equation*} \mathbb{P}(I(X)=1) = \frac{1}{L}\int_{0}^{L}\frac{\Lambda(z)}{\pi L}\,\mathrm{d}z.\end{equation*}

The path $\gamma$ that is given by

\begin{equation*} \gamma(t) = (z+ L\cos(t),L\sin(t)), \qquad \text{with}\quad \frac{\pi}{2}+\arcsin\bigg(\frac{z}{L}\bigg) \leq t \leq \frac{3\pi}{2} - \arcsin\bigg(\frac{z}{L}\bigg),\end{equation*}

parameterizes the arc of C(z) with arc length $\Lambda(z)$ and endpoints given by the points of intersection of C(z) with the y-axis, and so

\begin{equation*} \notag \mathbb{P}(I(X) = 1) = 1-\frac{2}{\pi L}\int_0^L\arcsin\bigg(\frac{z}{L}\bigg)\,\mathrm{d}z = \frac{2}{\pi}.\end{equation*}

3.2. The needle in the sphere

View $\mathbb S_r$ as an embedded Riemannian submanifold of $\mathbb R^3$ and, to simplify the computations, take its center to be (0, 0, 0). The distance between any two points p and q in $\mathbb S_r$ is the geodesic distance. Fix the length 2L to be equal to ${\pi r}/{n}$ for some natural number n that is greater than 1. The isometry group, $\mathcal{G}$ , of $\mathbb S_r$ is the orthogonal group O(3) and the geodesics of $\mathbb S_r$ are the great circles. Take $\mathcal{E}$ to be the counterclockwise-oriented great circle that is formed by the intersection of $\mathbb S_r$ with the (x, y) plane. Take G(L) to be the set of all great circles in $\mathbb S_r$ that intersect (0, 0, r) so that

\begin{align*} G(L)\cap\mathcal{E} = \bigg\{\bigg(r\cos\bigg(\frac{2mL}{r}\bigg),r\sin\bigg(\frac{2mL}{r}\bigg),0\bigg)\,:\, m \in \{0, \dots, 2n-1\}\bigg\}.\end{align*}

Great circles in G(L) intersect $\mathcal{E}$ at right angles at two antipodal points. The set of rotations with the common axis given by the line that passes through (0, 0, r) and $(0,0,-r)$ is the subgroup $\mathcal{G}^\prime$ of $\mathcal{G}$ , and $\mathcal{H}$ is the subgroup of $\mathcal{G}^\prime$ that is generated by the rotation $h_0$ , where

\begin{align*} h_0(r, 0, 0) = \bigg(r\cos\bigg(\frac{2L}{r}\bigg), r\sin\bigg(\frac{2L}{r}\bigg), 0\bigg).\end{align*}

For any w in $[-L, L]$ , write $\Lambda(w)$ and I(X) instead of $\Lambda_{(r, 0,0)}(w)$ and $I_{(r, 0,0)}(X)$ .

Proposition 3.1. For any positive real number r,

(3.1) \begin{equation} \mathbb{P}(I(X)=1) = 1 - \frac{2}{\pi L}\int_{0}^{L} \arcsin\bigg(\tan\bigg(\frac{w}{r}\bigg)\cot\bigg({\frac{L}{r}}\bigg)\bigg)\,\mathrm{d}w. \end{equation}

Proof. The circumference of any geodesic circle of radius L in $\mathbb S_r$ is $2\pi r\sin({L}/{r})$ . Since reflection across the y-axis is an isometry, (2.1) implies that

(3.2) \begin{equation} \mathbb{P}(I(X)=1) = \int_{0}^{L}\frac{\Lambda(w)}{\pi r\sin({{L}/{r}})} \cdot \frac{1}{L} \,\mathrm{d}w. \end{equation}

Take $G_0$ to be the great circle of G(L) that intersects (r, 0, 0), the set

\begin{align*}G_0 = \{(r\sin(\phi),0,r\cos(\phi))\,:\, 0 \leq \phi \leq 2\pi\}.\end{align*}

The geodesic circle $C_L(w)$ of radius L with center $(r\cos({{w}/{r}}), r\sin({{w}/{r}}), 0)$ is the set

\begin{align*} & C_L(w) = \bigg\{\bigg({-}r\sin\bigg({\frac{w}{r}}\bigg)\sin(\theta)\sin\bigg({\frac{L}{r}}\bigg) + r\cos\bigg({\frac{w}{r}}\bigg)\cos\bigg({\frac{L}{r}}\bigg), \\ & \qquad r\cos\bigg({\frac{w}{r}}\bigg)\sin(\theta)\sin\bigg({\frac{L}{r}}\bigg) + r\sin\bigg({\frac{w}{r}}\bigg)\cos\bigg({\frac{L}{r}}\bigg), -r\cos(\theta)\sin\bigg({\frac{L}{r}}\bigg)\bigg) \,:\, 0 \leq \theta \leq 2\pi\bigg\}. \notag \end{align*}

The points of intersection are therefore given by the equation $\sin(\theta) = -\tan({{w}/{r}})\cot({{L}/{r}})$ . For any w in [0, L], a counterclockwise-oriented path that parameterizes the smaller arc of $C_L(w)$ that the intersection with $G_0$ determines has endpoints given by the angles $\theta_1$ and $\theta_2$ , where

\begin{align*} \theta_1 = \pi + \arcsin\bigg(\tan\bigg({\frac{w}{r}}\bigg)\cot\bigg({\frac{L}{r}}\bigg)\bigg), \qquad \text{and}\quad \theta_2 = 2\pi - \arcsin\bigg(\tan\bigg({\frac{w}{r}}\bigg)\cot\bigg({\frac{L}{r}}\bigg)\bigg), \end{align*}

and so

(3.3) \begin{equation} \Lambda(w) = \pi r\sin\bigg({\frac{L}{r}}\bigg) - 2r\sin\bigg({\frac{L}{r}}\bigg)\arcsin\bigg(\tan\bigg(\frac{z}{r}\bigg)\cot\bigg({\frac{L}{r}}\bigg)\bigg). \end{equation}

Equations (3.2) and (3.3) together imply that

\begin{align*} \mathbb{P}(I(X)=1) = 1 - \frac{2}{\pi L} \int_{0}^{L}\arcsin\bigg(\tan\bigg(\frac{w}{r}\bigg)\cot\bigg({\frac{L}{r}}\bigg)\bigg)\,\mathrm{d}w. \end{align*}

3.3. The geometry of the Poincaré disk

View $\mathbb H_k$ as the scaled Poincaré disk, the open unit disk $\mathbb D$ in $\mathbb R^2$ endowed with the Riemannian metric $\mathrm{d}s^2$ , where

(3.4) \begin{equation} \mathrm{d}s^2 = \frac{4k^2}{(1-(x^2+y^2))^2}(\mathrm{d}x\otimes \mathrm{d}x + \mathrm{d}y \otimes \mathrm{d}y).\end{equation}

Any geodesic of $\mathbb H_k$ that contains (0, 0) is the intersection of a line in $\mathbb R^2$ with $\mathbb D$ . All other geodesics are the intersection with $\mathbb D$ of a circle in $\mathbb R^2$ that intersects the unit circle at right angles. Take $\mathcal{E}$ to be the geodesic given by the intersection of $\mathbb D$ with the x-axis.

For any point p in $\mathbb D$ , if the Euclidean distance from p to (0, 0) is d, then the hyperbolic distance is $2k\tanh^{-1}(d)$ . The isometry group $\mathcal{G}$ of $\mathbb H_k$ is the subgroup of the Möbius transformations that map the open unit disk to itself. The subgroup $\mathcal{G}^\prime$ of $\mathcal{G}$ that maps $\mathcal{E}$ to itself and preserves the orientation of $\mathcal{E}$ is the group of transformations of the form $F_\sigma$ where, for any real number $\sigma$ ,

\begin{align*} F_\sigma(x,y) = \bigg(\frac{\tau(x^2 + y^2) + (\tau^2 + 1)x + \tau}{(\tau x + 1)^2 + \tau^2y^2}, \frac{(1 - \tau^2)y}{(\tau x + 1)^2 + \tau^2y^2}\bigg), \qquad \text{where} \quad \tau = \tanh\bigg(\frac{\sigma}{2k}\bigg).\end{align*}

Notice that for any real numbers h and $\sigma$ , $F_\sigma(\tanh({h}/{2k}), 0) = (\tanh(({h + \sigma})/{2k}), 0)$ , and so $F_\sigma$ is the Möbius transformation that maps $\mathcal{E}$ to $\mathcal{E}$ , preserves the orientation of $\mathcal{E}$ , and moves points in $\mathcal{E}$ a signed hyperbolic distance of $\sigma$ along $\mathcal{E}$ . Take $\mathcal{H}$ to be the subgroup of $\mathcal{G}^\prime$ that is generated by the transformation $F_{2L}$ .

For each $\sigma$ in $\mathbb R$ , take $G_\sigma$ to be the geodesic $F_\sigma(G_0)$ , where $G_0$ is the unbounded geodesic in $\mathbb H_k$ that is given by the intersection of the y-axis with $\mathbb D$ . Each $G_\sigma$ intersects $\mathcal{E}$ at a right angle at $(\tanh({\sigma}/{2k}), 0)$ . Take G(L) to be the grating $G(L) = \{G_{2nL}\,:\, n \in \mathbb{Z}\}$ .

Hyperbolic circles in $\mathbb D$ are also Euclidean circles, but the hyperbolic radius and center and the Euclidean radius and center may differ. An apropos example is the hyperbolic circle with hyperbolic radius $\lambda$ whose center is a point in $\mathcal{E}$ that is a signed distance of h from (0, 0). The Euclidean center (x, 0) and radius r of this circle are given by

\begin{align*} x = \frac{1}{2}\bigg(\tanh\bigg(\frac{h+\lambda}{2k}\bigg) + \tanh\bigg(\frac{h-\lambda}{2k}\bigg)\bigg),\qquad\!\! \mathrm{and}\quad r = \frac{1}{2}\bigg(\tanh\bigg(\frac{h+\lambda}{2k}\bigg) - \tanh\bigg(\frac{h-\lambda}{2k}\bigg)\bigg).\end{align*}

3.4. The needle in the Poincaré disk

For each z in $\mathbb R$ , we once again compress the notation by writing $\Lambda(z)$ instead of $\Lambda_{(0,0)}(z)$ and I(X) instead of $I_{(0,0)}(X)$ .

Theorem 3.1. For any (x, 0) in $\mathcal{E}$ ,

(3.5) \begin{align} & \mathbb{P}(I_{(x,0)}(X)=1) \nonumber \\ & = 2\Bigg(1 - \frac{1}{\pi L\sinh({L}/{k})} \int_{0}^{L}\frac{2(\tanh(({z+L})/{2k})-\tanh(({z-L})/{2k}))} {\sqrt{(1-\tanh^2(({z+L})/{2k}))(1-\tanh^2(({z-L})/{2k}))}\,} \nonumber \\ & \qquad \times \arctan\Bigg(\sqrt{\frac{1-\tanh^2(({z-L})/{2k})}{1-\tanh^2(({z+L})/{2k})}} \cdot \sqrt{\frac{\tanh(({L+z})/{2k})}{\tanh(({L-z})/{2k})}}\Bigg)\,\mathrm{d}z\Bigg). \end{align}

Proof. It is convenient to take x to be equal to 0 and calculate the probability $\mathbb{P}(I(X)=1)$ . The circumference of any geodesic circle of hyperbolic radius L in $\mathbb H_k$ is $2\pi k\sinh({L}/{k})$ . Since reflection across the y-axis is an isometry, (2.1) implies that

(3.6) \begin{equation} \mathbb{P}(I(X)=1) = \int_{0}^{L}\frac{\Lambda(z)}{\pi k\sinh({L}/{k})}\cdot\frac{1}{L}\,\mathrm{d}z. \end{equation}

For any z in [0, L], the Euclidean center of $C_L(z)$ is (x(z), 0) and the Euclidean radius of $C_L(z)$ is r(z) for some real numbers x(z) and r(z). Take $(0,\pm y)$ to be the two intersections of $C_L(z)$ with $G_0$ so that $y = \sqrt{r(z)^2-x(z)^2}$ .

The angle, $\theta(z)$ , that is formed by the positive x-axis and the ray from (0, 0) to the point (0, y) has the property that

(3.7) \begin{equation} \cos(\theta(z)) = -\frac{x(z)}{r(z)}, \qquad \text{and}\quad \sin(\theta(z)) = \frac{\sqrt{r(z)^2 - x(z)^2}}{r(z)}. \end{equation}

Equation (3.4) and the fact that reflection across the x-axis is an isometry of $\mathbb H_k$ together imply that the hyperbolic arc length $\Lambda(z)$ of the arc $\mathcal{A}$ of $C_L(z)$ that lies to the left of $G_0$ is given by

\begin{equation*} \Lambda(z) = \int_{\mathcal{A}} \mathrm{d}s = 4kr(z)\int_{\theta(z)}^{\pi}\frac{\mathrm{d}t}{1-(x(z)+r(z)\cos(t))^2-(r(z)\sin(t))^2}. \end{equation*}

Rewrite the integral using the functions A and B that are given by $A(z)=1-x(z)^2-r(z)^2$ and $B(z)=2r(z)x(z)$ , and integrate to obtain the equality

\begin{equation*} \Lambda(z) = 2k\Bigg(\pi\sinh\bigg(\frac{L}{k}\bigg) - \frac{4r(z)}{\sqrt{A(z)^2-B(z)^2}\,} \arctan\Bigg(\sqrt{\frac{A(z)+B(z)}{A(z)-B(z)}}\cdot\tan\bigg(\frac{\theta(z)}{2}\bigg)\Bigg)\Bigg). \end{equation*}

The equality

\begin{align*} \tan\bigg(\frac{\theta(z)}{2}\bigg) = \frac{1-\cos(\theta(z))}{\sin(\theta(z))}, \end{align*}

together with (3.7) and the equalities

\begin{align*} x(z) - r(z) = \tanh\bigg(\frac{z-L}{2k}\bigg), \qquad \text{and}\quad x(z) + r(z) = \tanh\bigg(\frac{z+L}{2k}\bigg), \end{align*}

implies, after some simplification, that

\begin{multline*} \Lambda(z) = 2k\Bigg(\pi\sinh\bigg(\frac{L}{k}\bigg) - \frac{2(\tanh(({z+L})/{2k}) - \tanh(({z-L})/{2k}))} {\sqrt{(1-\tanh^2(({z+L})/{2k}))(1-\tanh^2(({z-L})/{2k}))}\,} \\ \times \arctan\Bigg(\sqrt{\frac{1-\tanh^{2}(({z-L})/{2k})}{1-\tanh^{2}(({z+L})/{2k})}} \cdot \sqrt{\frac{\tanh(({L+z})/{2k})}{\tanh(({L-z})/{2k})}}\Bigg)\Bigg). \end{multline*}

The formula for $\Lambda(z)$ together with (3.6) implies (3.5).

4. Limiting behavior

This section presents second-order expansions in the parameter L for the probabilities given by (3.1) and (3.5). Zeroth-order terms give the probability in the planar case (which is independent of L), first-order terms vanish, and second-order terms depend on the Gaussian curvature of the space. The following subsections utilize the standard ‘little-o’ notation to simplify expressions, where $\mathrm{o}(L)$ describes the behavior of a function as L tends to 0.

4.1. Order estimates for spheres

Proposition 4.1. For any positive real number r, if M is $\mathbb S_r$ , then

\begin{align*}\mathbb{P}(I(X)=1) = \frac{2}{\pi} + \frac{2}{9\pi r^2}L^2 + \mathrm{o}\big(L^2\big).\end{align*}

Proof. Take F to be given by

(4.1) \begin{equation} F(L) = \frac{\pi}{2}(1-\mathbb{P}(I(X)=1)). \end{equation}

Change variables and use the series expansions of $\tan$ and $\cot$ together with Proposition 3.1 to obtain the expansion

\begin{equation*} F(L) = \int_{0}^{1}\arcsin\bigg(z+L^2\bigg(\frac{z^3}{3r^2}-\frac{z}{3r^2}\bigg)+\mathrm{o}\big(L^3\big)\bigg)\,\mathrm{d}z. \end{equation*}

Although F is not initially defined at 0, it has a continuous extension to 0. Once again, denote by F this continuous extension. Differentiate F twice and integrate over the variable z to obtain the equalities $F(0) = {\pi}/{2} -1$ , $F^\prime(0) = 0$ , and $F^{\prime\prime}(0) = -{2}/{9r^2}$ , which imply that

\begin{equation*} F(L) = \bigg(\frac{\pi}{2}-1\bigg) - \frac{L^2}{9r^2} + \mathrm{o}\big(L^2\big). \end{equation*}

This expansion of F(L) to quadratic order together with (4.1) gives the desired expansion for the Buffon probability.

4.2. Order estimates for the Poincaré disk

Proposition 4.2. For any positive real number k, if M is $\mathbb H_k$ , then

\begin{align*} \mathbb{P}(I(X)=1) = 2\bigg(1 - \frac{L}{\pi k\sinh({L}/{k})} \bigg((\pi-1) + \frac{L^2}{6k^2}\bigg(\pi-\frac{1}{3}\bigg) + \mathrm{o}\big(L^2\big)\bigg)\bigg). \end{align*}

Proof. Change variables to rewrite the equation in Theorem 3.1 as

\begin{align*} & \mathbb{P}(I(X)=1) = \\ & 2\Bigg(1 - \frac{1}{\pi\sinh({L}/{k})}\int_{0}^{1}\frac{2(\tanh({(z+1)L}/{2k})-\tanh({(z-1)L}/{2k}))} {\sqrt{(1-\tanh^2({(z+1)L}/{2k}))(1-\tanh^2({(z-1)L}/{2k}))}\,} \\ & \qquad \times \arctan\Bigg(\sqrt{\frac{1-\tanh^2({(z-1)L}/{2k})}{1-\tanh^2({(z+1)L}/{2k})}} \cdot \sqrt{\frac{\tanh({(1+z)L}/{2k})}{\tanh({(1-z)L}/{2k})}}\Bigg)\,\mathrm{d}z\Bigg). \end{align*}

Take H to be the function that is given by

(4.2) \begin{equation} H(L) = \frac{\pi k\sinh({L}/{k})}{L}\bigg(1-\frac{1}{2}\mathbb{P}(I(X)=1)\bigg), \end{equation}

and use a series expansions for $\tan$ and the square root to obtain the equality

(4.3) \begin{multline} H(L) = \int_0^1\bigg(1 + \frac{L^2}{6k^2} + \mathrm{o}\big(L^3\big)\bigg) \\ \times \arctan\Bigg(\bigg(1 + \frac{L^2z}{2k^2} + \mathrm{o}\big(L^3\big)\bigg) \sqrt{\frac{z+1}{1-z}\bigg(1 - \frac{L^2z}{3k^2} + \mathrm{o}(L^4)\bigg)}\Bigg)\,\mathrm{d}z. \end{multline}

Take F to be the function that is given by

(4.4) \begin{align} F(L) & = \int_0^1\arctan\Bigg(\bigg(1 + \frac{L^2z}{2k^2} + \mathrm{o}\big(L^3\big)\bigg) \sqrt{\frac{z+1}{1-z}\bigg(1 - \frac{L^2z}{3k^2} + \mathrm{o}(L^4)\bigg)}\Bigg)\,\mathrm{d}z \notag \\ & = \int_0^1\arctan\Bigg(\bigg(1 + \tfrac{L^2z}{3k^2} + \mathrm{o}\big(L^3\big)\bigg) \sqrt{\frac{z+1}{1-z}}\Bigg)\,\mathrm{d}z. \end{align}

The function F has a continuous extension to 0. Once again denote by F this continuous extension. Differentiate F twice and integrate with respect to z to obtain the equalities $F(0) = -\frac{1}{2} + {\pi}/{2}$ , $F^\prime(0) = 0$ , and $F^{\prime\prime}(0) = {1}/{9k^2}$ . Expand F(L) up to quadratic terms to obtain the equality

(4.5) \begin{equation} F(L) = -\frac{1}{2}+\frac{\pi}{2} + \frac{1}{18k^2}L^2 + \mathrm{o}\big(L^2\big), \end{equation}

and use (4.2), (4.3), (4.4), and (4.5) to obtain the expansion up to quadratic terms in L of the Buffon probability for $\mathbb H_k$ .

4.3. Buffon deficits and Gaussian curvature

Notice that the corollary to Theorem 1.1 follows immediately from Propositions 4.1 and 4.2.

Proof of Theorem 1.1. It is enough to establish the result for M equal to $\mathbb R^2$ , $\mathbb S_r$ , or $\mathbb H_k$ . The result is immediate in the planar setting. For the $\mathbb S_r$ setting, use Proposition 4.1 to obtain the equalities

\begin{equation*} \lim_{L\to 0^+}\frac{9\pi}{2}\frac{\mathbb{P}(I(X)=1) - {2}/{\pi}}{L^2} = \lim_{L\to 0^+}\frac{9\pi}{2}\frac{{2}/{\pi} + \big({2}/{9\pi r^2}\big)L^2 + \mathrm{o}\big(L^2\big) - {2}/{\pi}}{L^2} = \frac{1}{r^2}. \end{equation*}

For the $\mathbb H_k$ setting, use Proposition 4.2 to obtain the equalities

\begin{align*} & \lim_{L\to 0^+}\frac{9\pi}{2}\frac{\mathbb{P}(I(X)=1) - {2}/{\pi}}{L^2} \\ & = \lim_{L\to 0^+}\frac{9\pi}{2} \frac{2\big(1-{L}/({\pi k\sinh({L}/{k})})\big((\pi-1)+\big({L^2}/{k^2}\big)({\pi}/{6}-{1}/{18})+\mathrm{o}\big(L^2\big)\big)\big) - {2}/{\pi}}{L^2} \\ & = \frac{9\pi}{2}\bigg({-}\frac{1}{3k^2} + \frac{1}{9\pi k^2}\bigg) + \frac{9\pi}{2}\lim_{L\to 0^+}\frac{2(1-{L}/({\pi k\sinh({L}/{k})})(\pi-1)) - {2}/{\pi}}{L^2} = -\frac{1}{k^2}.\end{align*}

The similarity between Theorem 1.1 and the Bertrand–Diguet–Puiseux theorem merits some further discussion. Denote by $\mathrm{Circ}(C_L(M))$ and $\mathrm{ Area}(C_L(M))$ the circumference and area of a geodesic circle of radius L in M. The Bertrand–Diguet–Puiseux theorem and Theorem 1.1 together imply that

\begin{align*} \kappa(M) & = \lim_{L\to 0^+}\frac{6}{L^2}\bigg(\frac{2\pi L - \mathrm{Circ}(C_L(M))}{2\pi L}\bigg) \\ & = \lim_{L\to 0^+}\frac{12}{L^2}\bigg(\frac{\pi L^2 - \mathrm{Area}(C_L(M))}{\pi L^2}\bigg) = \lim_{L\to 0^+}-\frac{9}{L^2}\bigg(\frac{{2}/{\pi} - \mathbb{P}(I(X)=1)}{{2}/{\pi}}\bigg).\end{align*}

Although the various deficits (circumference, area, and Buffon) initially appear to involve $\kappa(M)$ in different ways, the ratios of the deficits to the planar quantities involve $\kappa(M)$ in the same way, as a second-order term in the Taylor expansion of the ratio as a function of L.

Acknowledgements

The current work grew from a collaboration with undergraduate students at the University of California, Riverside who participated in the undergraduate research program and the Faculty Led Education Abroad Program (FLEAP). We thank Professor Yat Sun Poon, department chair (2015–2021), who enthusiastically supported both programs, and Dr. Karolyn Andrews, for her support for Weisbart’s FLEAP program that ran in summer 2018 and 2019. We thank James Alcala, Christopher Kirchgraber, Frances Lam, and Alexander Wang for the time they spent as undergraduate researchers working on this project in its early stages.

We thank the anonymous reviewers for their interest in this paper and for their detailed comments and corrections. Their input motivated substantial improvements to this work.

Funding information

There are no funding bodies to thank relating to the creation of this article.

Competing interests

There were no competing interests to declare which arose during the preparation or publication process of this article.

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Figure 0

Figure 1: Intersection of the needle with the grating.