A Probabilistic Misbehavior Detection Scheme towards Efficient Trust Establishment in Delay-tolerant...
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Transcript of A Probabilistic Misbehavior Detection Scheme towards Efficient Trust Establishment in Delay-tolerant...
A Probabilistic Misbehavior Detection Scheme
towards Efficient Trust Establishment in
Delay-tolerant Networks
Haojin Zhu, Suguo Du, Zhaoyu Gao, Mianxiong Dong, Zhenfu Cao
Presented by Youyou Cao
Outline
IntroductionSystem modelBasic iTrust misbehavior detection scheme Advanced iTrust probabilistic misbehavior detection schemeExperiment ResultsFuture workConclusion
Introduction
Delay tolerant network(DTN) lack of contemporaneous end-to-end path High variation in network conditions Difficulty to predict mobility patterns Long feedback delay
Store-carry-and-forward strategy In-transit messages can be sent over an existing link and buffered at the next hop until the next
link in path appears
DTN Routing Misbehavior Dropping packets intentionally Selfish/Malicious Significantly reduce the packet delivery rate, serious threat against network performance
of DTN
Related work
Misbehavior detection scheme for MANET:Neighborhood monitoring
---- won’t work for DTN!
black hole attack cannot
be detected due to lack of witness
Destination acknowledge
---- won’t work for DTN!
Lack of contemporaneous path
Current misbehavior detection schemes for DTNs:Based on forwarding history verification Problem: Transmission overhead and verification cost is high
DCA
E
B
FNegative ACK
System ModelA normal DTN consisted of mobile devices owned by individual users.
Each node i has a unique ID and a corresponding public/private key pair.
Each node must pay a deposit C before it joins the network, and the deposit will be paid back after the node leaves, if there is no misbehavior activity of the node.
A periodically available Trust Authority (TA) exists to take the responsibility of misbehavior detection in DTN.
For a specific detection target , TA will request ’s forwarding history in the global network.
Routing Model
Use single-copy routing mechanism(First Contact routing protocol)
Note: the proposed misbehaving detection scheme can also be applied to delegation based routing protocols or multi-copy based routing protocols
Assume the communication range of a mobile node is finite.A data sender out of destination node’s communication range can
only transmit data via a sequence of intermediate nodes in a multi-hop manner.
Threat model
Assume each node in the networks is rational and a rational node’s goal is to maximize its own profit.
Mainly consider two kinds of misbehavior node: Selfish
Due to the selfish nature and energy consuming, selfish nodes are not willing to forward bundles for others without sufficient reward.
MaliciousAs an adversary, the malicious nodes arbitrarily drop others’ bundles (blackhole or greyhole attack), which often take place beyond others’ observation in a sparse DTN, leading to serious performance degradation.
Design Requirements
Distributed:Require that a network authority responsible for the administration
of the network is only required to be periodically available and consequently incapable of monitoring the operational minutiae of the network.
Robust: Require a misbehavior detection scheme that could tolerate various
forwarding failures caused by various network environments.
Scalability: Require a scheme that works independent of the size and density of
the network.
Basic iTrust scheme for misbehavior detection in DTNsRouting Evidence Generation Phase
Three kinds of data forwarding evidences to judge if a node is a malicious one or not
Auditing PhaseThree misbehavior detection cases
• An honest data forwarding with sufficient contacts
• An honest data forwarding with insufficient contacts
• A misbehaving data forwarding with/without sufficient contacts
Routing Evidence Generation Phase
message Time stamp Packet expiration time
Signature generated by the source nodes on message MSignature generated by node to indicate that the
forwarding task has been delegated to node
Signature generated by node to indicate that has accepted this task
Note: In the audit phase, for the investigation target node , will submit the delegation task evidences to TA for verification
Routing Evidence Generation Phase
11
Signature generated by node to demonstrate the authenticity of forwarding history evidence
Note: In the audit phase, the investigation target node will submit the forwarding history evidence to TA to demonstrate that he has tried his best to fulfill the routing task defined by the delegation task evidence.
Routing Evidence Generation Phase
Note: Contact history evidence will be stored at both nodes. In the audit phase, for the investigation target node , both and will submit their contact history evidence to TA for verification. Contact history evidence can prevent blackhole or greyhole attack since nodes with sufficient contact with others fail to forward data will be regarded as misbehavior nodes
Basic iTrust scheme illustration
In the Routing Evidence Generation Phase: A forwards packets to B ,then gets the delegation history back. B
holds the packet and then encounters C. C gets the contact history about B.
In the Auditing Phase:When TA decides to check B, TA will broadcast a message to ask
other nodes to submit all the evidence about B, then A submits the delegation history from B, B submits the forwarding history ,C submits the contact history about B.
Auditing phase
TA will launch an investigation request towards node in the global network during a certain period [, ]
Each node in the network submit its collected evidences regarding
TA collect all the information regarding and get the sets
TA check if message forwarding requests have been honestly fulfilled by
Auditing phase
Class I (An Honest Data Forwarding with Sufficient Contacts)
Class II (An Honest Data Forwarding with Insufficient Contacts)
m: message sent to for future forwarding (m): message expiration time(m): set of next-hop nodes chosen for message forwardingR: set of contacted nodes satisfying the DTN routing protocol requirements during [(m), ]D: number of copies required by DTN routing
Auditing phase
Class III (A Misbehaving Data Forwarding with/without Sufficient Contacts)
m: message sent to for future forwarding (m): message expiration time(m): set of next-hop nodes chosen for message forwardingR: set of contacted nodes satisfying the DTN routing protocol requirements during [(m), ]D: number of copies required by DTN routing
TA judges if node is a misbehavior or not by triggering the Algorithm 1.
The basic misbehavior detection algorithm
The proposed algorithm itself incurs a low checking overhead.
However, to prevent malicious users from providing fake delegation/forwarding/contact evidences, TA should check the authenticity of each evidence by verifying the corresponding signatures, which introduce a high transmission and signature verification overhead.
So a probabilistic misbehavior detection scheme, where the TA launches the misbehavior detection at a certain probability, is proposed to reduce the detection overhead without compromising the detection performance.
The probabilistic scheme of iTrust is inspired by the Inspection game theory.
From basic to probabilistic
Game theory analysisAssumptions:
g: the forwarding transmission cost for each node to make a packet forwardingW: compensation received from TA if the node successfully pass the investigationC: punishment paid if the node failed the investigationV: credit received by TA for each successful data forwardingH: investigation cost for TA
TA’s strategies: Inspecting (I) or Not inspecting (N)Node’s strategies: Forwarding (F) or Offending (O)
Game theory analysis
Note: should b
Game theory analysis
If the node chooses offending strategy, its payoff is
If the node chooses forwarding strategy, its payoff is
Note: should b
Reduction of misbehavior detection cost
Game theory analysis
Note: should be
Evaluation of the scalability of iTrust
Impact of Percentage of Malicious Nodes
Malicious nodes detection rate >60% for all three case
Misidentified rate drops when MNR increases
Cost is linear to inspection probability
Impact of Various Packet Loss Rate
iTrust is effective for both black hole and grey hole attack
Misidentification rate is under 8% if the detection probability is under 10%
Cost is linear to inspection probability
Impact of choosing different detection probability
• iTrust can significantly reduce the misbehavior detection cost
• Suggest a lower detection probability such as 10% or 20%
• Correction: Note: should change to Fig. 4(c) and 5(c)
Impact of nodes’ mobility
Impact of message generation interval
Future WorkExploiting reputation system to further improve the performance of iTrust
Currently, iTrust assumes the same detection probability for each node.
Intuitively, should use a lower inspection probability on honest nodes and a higher inspection probability on a misbehaving node
Solution:Combine reputation system with iTrustDefine the inspection probability p to be the inverse function of reputation r, we also need that 1 > p >
ConclusioniTrust: a Probabilistic Misbehavior Detection Scheme
Model iTrust as an Inspection Game and show that an appropriate probability setting could assure the security of the DTNs at a reduced detection overhead.
Simulation results confirm that iTrust will reduce transmission overhead incurred by misbehavior detection while detecting the malicious nodes effectively.