detecting spoofing and anomalous traffic in wireless networks via forge-resistant relationships

47
Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships Qing Li and Wade Trappe IEEE Transactions on Information Forensics and Security, VOL. 2, No. 4, December 2007 Presented by: Ryan Yandle

Upload: marius

Post on 25-Feb-2016

32 views

Category:

Documents


1 download

DESCRIPTION

Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships. Qing Li and Wade Trappe IEEE Transactions on Information Forensics and Security, VOL. 2, No. 4, December 2007 Presented by: Ryan Yandle. Outline. Spoofing ORBIT - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant

Relationships

Qing Li and Wade TrappeIEEE Transactions on Information Forensics and Security, VOL. 2, No. 4, December 2007

Presented by: Ryan Yandle

Page 2: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Outline Spoofing ORBIT Family 1 – Relationships via Auxiliary Fields

Method A – Sequence Number Method B – One-way chains

Family 2 – Relationships via Intrinsic Properties Method A – Interarrival time Method B – Joint Background Traffic and Interarrival time

Analysis Multilevel Classification Conclusion

Page 3: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

What is Spoofing? The practice of

impersonating another entity in order to subvert security.

Spoofing allows the attacker to remain anonymous and undetected in the network.

Page 4: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

More Specifically This paper refers to MAC address spoofing. The attacker tries to gain access to the

WLAN by cloning the MAC address of a legitimate user.

Page 5: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

What are Forge-Resistant Relationships? Rules that govern the relationship between

two distinct entities These rules define the relationship such that

another entity (attacker) trying to forge the relationship would be caught

Paper’s focus is to detect spoofing by creating these unique relationships

Page 6: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

The ORBIT Wireless Test Bed Composed of a 2d

grid of wireless nodes

Jointly run by several schools in the NY/NJ area

Page 7: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Test Bed Setup

A – Legitimate Sender

B – Attacker

X – Monitor

Page 8: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Strategy Overview Consider that the

legitimate sender has a unique identity

Associated with their identity will be a particular sequence of packets

From these packets we may we may observe states

Page 9: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

More Strategery… A Relationship

Consistency Check (RCC) is a binary rule that returns 1 if the states obey the rule R with respect to each other.

Page 10: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

But… Simply using a relationship R and checking

the corresponding RCC at the monitoring device is not going to provide reliable security

We need to add forgeability requirements to the relationship

Thus, a RRCC (forge-resistant RCC) is needed

Page 11: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Definition of RRCC A ε-forge-resistant relationship R is a rule

governing the relationship between a set of states from a particular identity, for which there is a small probability of another device being able to forge a set of states such that a monitoring device would evaluate the corresponding RCC as 1.

Page 12: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

More… We will view the output of an RRCC as the

result of deciding between two different hypotheses. H0 – the null hypothesis that corresponds to non-

suspicious activity H1 – the alternate hypothesis that corresponds to

anomalous behavior

Page 13: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Quantifying Effectiveness We will use several measures to quantify the

effectiveness of R. The probability of a false alarm

PFA = Pr(H1;H0) Probability that we will decide a set of states is

suspicious when it was really legitimate The probability of a missed detection

PMD = Pr(H0;H1) Probability of deciding that a set of states are

legitimate when they were not

Page 14: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Quantifying Effectiveness Cont.

The probability of detection PD = 1 – PMD

Other Symbols: ε = PMD

δ = PFA

Therefore, we can define an RRCC by (ε,δ)

Page 15: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Two Proposed Families for Relationships

1. Using auxiliary fields in the MAC frame to create a monotonic relationship

2. Using traffic inter-arrival statistics to detect anomalous traffic

Page 16: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Family I - Forge-Resistant Relationships via Auxiliary Fields Method A

Anomaly Detection via Sequence Number Monotonicity Enforce a rule that requires

packet sequence numbers to follow a monotonic relationship, denoted as Rseq

Page 17: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

802.11 MAC Frame Structure

Generally used to re-assemble fragmented frames or detect duplicate packets.

Fragment control – 4bits Sequence number – 12bits = 4096 possibilities

ranging from [0,4095] Firmware

Page 18: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Rseq

It does not matter if the attacker can manipulate its own sequence numbers.

Cloning attempt would be exposed due to duplicate sequence numbers

Therefore, the forge resistance stems from the fact that the attacker cannot stop the sender from transmitting packets.

Page 19: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Single Source Sequence Numbers the difference in sequence numbers

between two consecutive packets The possible values for : [1, 4096]

A value of 4096 is equivalent to a sequence number difference of 0 (duplicate sequence numbers)

The mean distribution for is E[] = 1/(1-p)2

where p is the packet loss rate The variance for the distribution of is

σ = p/(1-p)22

Page 20: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Theoretical Packet Loss Using the formula’s that we just learned, a

theoretical transmission with packet loss of 50%: E[τ] = 2 στ = 1.41

Even for networks with poor connectivity, the difference in sequence numbers between successive packets will be relatively small

2

Page 21: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Dual Source Sequence Numbers Let y be the sequence number from the real

source Let x be the sequence number from the

attacker z = x-y gives us a range of [-4095,4095] This gap will be defined as = z % 4096

Page 22: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Dual Source Cont. If we then map a difference of 0 to 4096, we

have a uniform distribution over [1,4096] E[] = 2048.5 σ = 1182

Page 23: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Single Source Behavior A single node is transmitting packets using a

specified MAC address to a receiver No anomalous behavior is present in this scenario

Page 24: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Dual Source Behavior Two nodes using the same MAC address to

transmit packets One node is spoofing the other’s MAC address

Page 25: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Lets build a detector… We will define the RRCC detection scheme as

follows: Choose a window of packets coming from a

specific MAC address We will choose a window with size L The detector will calculate L-1 sequence number

gaps

Page 26: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

More on the detector The detector will determine that there is an

anomaly if MAXl=1 to L-1 {l} > is determined by solving for a desired false

alarm rate

Page 27: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Example: L = 5 & = 3

1 2 3 76 5 7 8 9 10 11

1 73 71 2MAX{ }

73 73 > , RETURN(1)

Page 28: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Performance of Sequence Number Monotonicity

L = 2

Page 29: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Sequence Number Gap Statistics for a Single Source from ORBIT

Page 30: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

When would this not work? This method of detection could only work with

a presence of heterogeneous sources; the legitimate device must be transmitting in order to reveal the anomaly.

Page 31: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Family I - Forge-Resistant Relationships via Auxiliary Fields Method B

One-way chain of Temporary Identifiers The sender attaches a TIF

(temporary identifier field) to its identity, forcing the adversary to solve a cryptographic puzzle in order to spoof.

Page 32: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Temporary Identifier Fields Similar to what was proposed in TESLA Compute a one-way chain of numbers, and

attach them to the frames in reverse order. In order for the attacker to spoof a message,

they would need to find the inverse of the function used to compute the one-way chain.

This method is loss-tolerant

Page 33: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

ROC Curve for one-way chain TIF’s

Bit Length = 10 Bit Length = 16

Page 34: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Outline Spoofing ORBIT Family 1 – Relationships via Auxiliary Fields

Method A – Sequence Number Method B – One-way chains

Family 2 – Relationships via Intrinsic Properties Method A – Interarrival time Method B – Joint Background Traffic and Interarrival time

Analysis Multilevel Classification Conclusion

Page 35: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Family II - Forge-Resistant Relationships via Intrinsic Properties Method A) Traffic Arrival

Consistency Checks Use a traffic shaping tool to

control the interarrival times observed by the monitoring device.

These interarrival statistics are then used to determine anomalous behavior

Page 36: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Traffic Arrival Consistency Checks Suppose we have our three devices, A, B, X

A is set to transmit at a fixed interval X will take note of this behavior, if B starts

transmitting (spoofing to impersonate A) then the detector will notice a change in the distribution of packet arrivals

Page 37: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Resulting Histograms

Page 38: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Experimental Results: 200ms

Page 39: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Experimental Results cont.

Page 40: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

When would this method become unreliable on a wireless network?

With the presence of high background traffic, this method would become less suitable.

Background traffic would affect the transmission intervals of the sender, possibly causing false alarms.

Page 41: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Family II - Forge-Resistant Relationships via Intrinsic Properties Method B) Joint Traffic

Load and Interarrival Time Detector Jointly examine the

interarrvial time and the background traffic load

Use these two pieces of information to determine anomalous behavior, even under heavy traffic situations

Page 42: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Joint Traffic Load and Interarrival Time Detector We can define to be the observed average

interarrival time, and to be the observed traffic load.

We then partition this (, ) space into two regions Region I – non-suspicious behavior Region II – anomalous activity

This idea is later revisited in the experimental validation section.

Page 43: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Enhanced Detection using Multilevel Classification Extremely useful to have a severity analysis Plot severity vs. average sequence number

gap of a particular window Severity is defined as the sum of the differences

between a normal gap and the observed gap for all gaps in a window size L

Page 44: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Severity vs. Average Sequence Number Gap

Page 45: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Conclusion All methods have their flaws There are already mechanisms in place

within 802.11 that can help detect spoofing attacks

Thank you for your time!

Page 46: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Questions / Comments

Page 47: Detecting Spoofing and Anomalous Traffic in Wireless Networks via Forge-Resistant Relationships

Sequence Number Gap Statistics for Dual Source from ORBIT